研究者業績

劉 ウェン

リュウ ウェン  (Wen Liu)

基本情報

所属
千葉大学 大学院工学研究院 准教授
学位
博士(工)(千葉大学)

研究者番号
60733128
J-GLOBAL ID
201801019722087128
researchmap会員ID
B000345889

外部リンク

論文

 68
  • Kazuki Karimai, Wen Liu, Yoshihisa Maruyama
    Applied Sciences (Switzerland) 14(7) 2024年4月  
    Liquefaction is a significant challenge in the fields of earthquake risk assessment and soil dynamics, as it has the potential to cause extensive damage to buildings and infrastructure through ground failure. During the 2011 Great East Japan Earthquake, Urayasu City in the Chiba Prefecture experienced severe soil liquefaction, leading to evacuation losses due to the effect of the liquefaction on roads. Therefore, developing quantitative predictions of ground subsidence caused by liquefaction and understanding its contributing factors are imperative in preparing for potential future mega-earthquakes. This research is novel because previous research primarily focused on developing predictive models for determining the presence or absence of liquefaction, and there are few examples available of quantitative liquefaction magnitude after liquefaction has occurred. This research study extracts features from existing datasets and builds a predictive model, supplemented by factor analysis. Using the Cabinet Office of Japan’s Nankai Trough Megathrust Earthquake model, liquefaction-induced ground subsidence was designated as the dependent variable. A gradient-boosted decision-tree (GDBT) prediction model was then developed. Additionally, the Shapley additive explanations (SHAP) method was employed to analyze the contribution of each feature to the prediction results. The study found that the XGBoost model outperformed the LightGBM model in terms of predictive accuracy, with the predicted values closely aligned with the actual measurements, thereby proving its effectiveness in predicting ground subsidence due to liquefaction. Furthermore, it was demonstrated that liquefaction assessments, which were previously challenging, can now be interpreted using SHAP factors. This enables accountable wide-area prediction of liquefaction-induced ground subsidence.
  • 籠嶋 彩音, 劉 ウェン, 丸山 喜久, 堀江 啓
    土木学会論文集 79(13) n/a 2023年  
    2016年4月熊本地震では,熊本県熊本地方を震源とするMw6.2の地震が発生し,その約16時間後に同地域を震源とするMw7.0の地震が発生した.本研究では,地震による建物の被害状況を効率的にかつ安全に把握する方法として,航空レーザ測量データを深層学習することによって建物被害検出モデルの構築を試みた.本震前後に収集した航空レーザ測量データに対し,深層学習のアルゴリズムの一つである畳み込みニューラルネットワーク(CNN)を適用し,ネットワーク構成を変えながら最良のモデルの検討を行った.その結果,正答率が90%を超えるモデルを構築することができた.
  • 安江 崇志, 劉 ウェン, 丸山 喜久
    AI・データサイエンス論文集 4(3) 245-253 2023年  
    現在,日本の水道では年間2万件を超える漏水・破損事故が発生している.上水道管の漏水は,地上に流れ出す地上漏水と,地上には流れ出さず地下で流れている地下漏水の2種類に大別できる.地上漏水は人目に触れることから発見しやすいものの,地下漏水は漏水の状況を直接目視で確認できないため,早期発見のための技術開発が求められている.そこで本研究では,現在普及が進んでいるスマートメータを活用した水道管路のモニタリングを想定し,管網端部の水圧情報を使用した漏水位置予測に関する検討を行った.漏水シナリオや機械学習手法の異なる6つのモデルを構築し,その予測精度を比較した.水圧変化率,水圧変化量,管種情報を説明変数とし,LightGBMに基づき構築した漏水予測モデルが最も良好な結果を示した.
  • Junjie Wu, Wen Liu, Yoshihisa Maruyama
    Remote Sensing 14(18) 2022年9月  査読有り
    Road markings, including road lanes and symbolic road markings, can convey abundant guidance information to autonomous driving cars. However, recent works have paid less attention to the recognition of symbolic road markings compared with road lanes. In this study, a road-marking-segmentation dataset named the RMD (Road Marking Dataset) is introduced to compensate for the lack of datasets and the limitations of the existing datasets. Furthermore, we propose a novel multiscale attention-based dilated convolutional neural network (MSA-DCNN) to tackle the proposed RMD. The proposed method employs multiscale attention to merge the weighting outputs of adjacent multiscale inputs, and dilated convolution to capture spatial-context information. The performance analysis shows that the proposed MSA-DCNN yields the best results by combining multiscale attention and dilated convolution. Additionally, the proposed method gains the mIoU of 74.88%, which is a significant improvement over the existing techniques.

MISC

 74
  • Fumio Yamazaki, Wen Liu, Takashi Furuya, Yoshihisa Maruyama
    IGARSS 2022 - 2022 IEEE International Geoscience and Remote Sensing Symposium 2022-July 497-500 2022年7月17日  
    One span of an aqueduct bridge suddenly collapsed in Wakayama City in western Japan on October 3, 2021. This study investigates the use of remote sensing data for the assessment of bridge situations in the normal time and in accidents/disasters. A field survey was conducted by the authors with the aid of a small UA V. Google Street View photos taken before the accident were also used. Based on these data, it is estimated that more than 5 hangers out of 18 might have failed for the collapsed span when the bridge collapse occurred. The failure of 4 hangers was also confirmed in the adjacent surviving span from the UAV images. The pre-and post-event high-resolution TerraSAR-X intensity images were also introduced to extract the collapsed span from the SAR data.
  • Yihao Zhan, Wen Liu, Yoshihisa Maruyama
    ACRS 2020 - 41st Asian Conference on Remote Sensing 2020年  
    S: Remote sensing is an effective method to evaluate the damage situation after a large-scale nature disaster. Recently, deep learning algorithms have been used for the damage assessment from remote sensing images. A series of earthquakes hit the Kyushu region, Japan in April 2016, and caused severe damage in Kumamoto and Oita Prefectures. Numerous buildings were collapsed by the continuous strong shaking. In this study, the authors modified the Mask R-CNN model to extract residential buildings and estimate their damage levels. The Mask R-CNN model employs a two-stage instance segmentation algorithm which maintains a Convolutional Neural Network backbone and a Region Proposal Network with a ROI Align head. The aerial images captured on April 29, 2016 (two weeks after the main shock) in Mashiki Town, Kumamoto Prefecture, were used as the training and test sets. Comparing with the damage report of the field survey, the accuracy for the building extraction was 92%. As for the damage estimation, the precision and recall of the collapsed buildings achieved approximately 72% and 95%.
  • Wen Liu, Fumio Yamazaki
    2019 6th Asia-Pacific Conference on Synthetic Aperture Radar, APSAR 2019 2019年11月  
    A large eruption occurred in Kilauea volcano's East Rift Zone (ERZ) on the island of Hawaii, U.S.A., from May 3 to September 4, 2018. Twenty-four fissures erupted lava near Leilani Estates and destroyed more than 700 houses. In this study, four pre-event and six co-event ALOS-2 PALSAR-2 images acquired from two neighboring ascending paths were applied to monitor the surface deformation and the expansion of lava flows on the ERZ. The deformation was estimated by the differential interferometric analysis. During the eruption, both Halema'uma'u Crater and Pu'u 'O'o Crater went away from the PALSAR-2 sensor, whereas the Leilani Estates moved close to the sensor direction. The obtained movements were verified by comparing with GPS records. The lava flows from the Leilani Estates to the Pacific Ocean were detected by low backscattering in the intensity images. Finally, multi-temporal maps of the lava flows were created and compared with the maps published by U. S. Geological Survey.
  • Wen Liu, Fumio Yamazaki
    International Geoscience and Remote Sensing Symposium (IGARSS) 4833-4836 2019年7月  
    Due to the huge tsunamis occurred in the 2011 Tohoku-Oki, Japan, earthquake, more than 100 bridges located in the Pacific coast of the Tohoku region were severely damaged. In this study, the extraction of the damaged bridges in Miyagi Prefecture, Japan, was conducted by two methods using two post-event TerraSAR-X (TSX) intensity images, respectively. First, the statistical features within the outlines of the target bridges were calculated. The thresholding method of the backscatter intensity was applied to extract the damaged bridges. Then the TSX image was transformed into a binary image including water and non-water regions. The percentages of no-water regions within the bridge outlines were used to classify the washed-away and survived bridges. By comparing with the optical images and the report of field surveys, the accuracies of the proposed two methods and the influence of the shooting date were investigated.
  • Wen Liu, Fumio Yamazaki, Yoshihisa Maruyama
    2019 Joint Urban Remote Sensing Event, JURSE 2019 2019年5月  
    Successive heavy rainfall affected the western Japan from the late June to the early July 2018. Increased river water overflowed and destroyed river banks, which caused flooding in vast areas. In this study, two pre-event and one co-event ALOS-2 PALSAR-2 images were used to extract inundation areas in Kurashiki and Okayama Cities, Okayama Prefecture, Japan. First, the difference between the pre-event and co-event coherence values was calculated. The decreased coherence areas were extracted as possible inundation. Then the water regions were extracted by the threshold values from the threeoral intensity images. The increased water regions in July 2018 were obtained as inundation. Finally, the extracted results from the coherence and intensity images were merged to create an inundation map. The results were verified by comparing with a web-based questionnaire survey report and visual interpretation of aerial photos.
  • Wen Liu, Haruya Hirano, Fumio Yamazaki
    International Geoscience and Remote Sensing Symposium (IGARSS) 2018-July 862-865 2018年10月31日  
    In the March 11, 2011 Tohoku-Oki, Japan, earthquake, many bridges in Iwate and Miyagi Prefectures were washed away by associated tsunamis. In this study, nine bridges in the inundated areas of Iwate Prefecture, Japan were selected as targets to estimate their damage status from post-event TerraSAR-X (TSX) satellite images and Pi-SAR-X2 airborne SAR images. By visual interpretation, washed-away bridges could be identified from both the satellite and airborne very high-resolution SAR images. The statistical analysis was carried out to classify non-damaged bridges, debris blocked bridges and washed-away bridges. Pre- and post-event optical images and filed survey reports were introduced as the truth data of bridges' situation.
  • リュウ ウェン, 山崎文雄
    土木学会年次学術講演会講演概要集(CD-ROM) 73rd ROMBUNNO.CS12‐027 2018年8月1日  
  • 山崎文雄, 平野晴也, リュウ ウェン
    土木学会年次学術講演会講演概要集(CD-ROM) 73rd ROMBUNNO.I‐586 2018年8月1日  
  • 須藤 巧哉, 山崎 文雄, 井ノ口 宗成, 堀江 啓, 劉 ウェン
    構造II (2018) 657-658 2018年7月20日  
  • 平野/晴也, 山崎 文雄, 劉 ウェン
    インフラ・ライフライン減災対策シンポジウム講演集 = Proceedings of the Symposium on Disaster Mitigation and Resilience of the Infrastructures and Lifeline Systems 8 33-39 2018年1月19日  
  • 宮崎 駿太朗, 劉 ウェン, 山崎 文雄
    インフラ・ライフライン減災対策シンポジウム講演集 Proceedings of the Simposium on Disaster Mitigation and Resilience of the Infrastructures and Lifeline Systems 8 49-52 2018年1月19日  
  • タン ティンシェン, 劉 ウェン, 山崎 文雄
    インフラ・ライフライン減災対策シンポジウム講演集 Proceedings of the Simposium on Disaster Mitigation and Resilience of the Infrastructures and Lifeline Systems 8 53-56 2018年1月19日  
  • 須藤 巧哉, 山崎 文雄, 井ノ口 宗成, 堀江 啓, 劉 ウェン
    インフラ・ライフライン減災対策シンポジウム講演集 Proceedings of the Simposium on Disaster Mitigation and Resilience of the Infrastructures and Lifeline Systems 8 61-65 2018年1月19日  
  • W. Liu, F. Yamazaki
    Proceedings of SPIE - The International Society for Optical Engineering 10779 2018年  
    The 2016 Kumamoto earthquake was a series of earthquake events, including the moment-magnitude (Mw) 7.0 mainshock on April 16, 2016 and the Mw 6.2 foreshock on April 14. Due to the strong shaking, more than 8,000 buildings were collapsed and about 30,000 buildings were severely damaged. Geospatial Information Authority of Japan (GSI) acquired high density (5.93 point/m 2 ) Lidar data on May 8, 2016, three weeks after the earthquakes. In this study, the pre- and postevent Lidar data were used to detect the collapsed buildings in Mashiki town, Kumamoto Prefecture, Japan, which was one of the most severely affected regions. The pre-event Lidar data were taken on May 15, 2006 with the 0.72 point/m 2 density. A report of building damage grades obtained by the field surveys of the Architectural Institute of Japan (AIJ) was introduced as the reference. First, the statistics of height differences within each building outline were calculated. Then the characteristics of the different damage grades were investigated. As a result, the average values of the height differences were adopted to extract collapsed buildings. 618 buildings were extracted as collapsed from 3,408 buildings existed in 2006. Comparing with the reference, 91% collapsed buildings were detected successfully, and the F-score was 0.88.
  • Ryoto Tanabe, Fumio Yamazaki, Wen Liu
    Proceedings - 39th Asian Conference on Remote Sensing: Remote Sensing Enabling Prosperity, ACRS 2018 3 1545-1553 2018年  
    To grasp damage situation soon after an earthquake is an important issue for recovery and relief activities. AirborneSynthetic Aperture Radar (SAR) sensors are suitable for collecting information in emergency response, since they canobtain high-resolution images regardless of weather and sunlight conditions. After the Kumamoto earthquakes on April14 and 16, 2016, scores of bridges were damaged and around 200 landslides occurred due to the strong shaking. In thisstudy, we set the target area in Minami-Aso village, Kumamoto Prefecture, Japan, which was suffered from the hugedamage of landslides. The landslide areas and the damaged bridges were investigated using the pre-and post-event PiSAR-X2 airborne SAR images. As a result, the HH polarization and the surface scattering component were found tobe most suitable to detect landslide areas by the pre-and post-event difference. For estimating the damage of bridges,the contribution ratio of each scattering component was obtained within bridge outlines.As the result,collapsed bridgescould be extracted using the pre-and post-event airborne SAR images.
  • Bellanie Lapian, Fumio Yamazaki, Wen Liu
    Proceedings - 39th Asian Conference on Remote Sensing: Remote Sensing Enabling Prosperity, ACRS 2018 3 1554-1561 2018年  
    Damage assessment is an important issue for emergency response and restoration activities after theoccurrence of nature disasters. In this regard, airborne SAR systems are recognized as an effective tool formonitoring the affected areas due to its adjustable observation-flight route. As a preliminary study of damageassessment, this study attempts to grasp the backscattering characteristics of buildings using Pi-SAR-X2 airborneSAR images. The relationship of the backscattering conditions and the illuminate angle were analyzed using severalflat roof buildings around Tokyo Bay, Japan from four Pi-SAR-X2 images. First, full polarization imagery data weredecomposed into four scattering components. The power of original polarizations as well as the ratio of eachscattering component were then calculated within a building's layover region. Based on these results, the effects ofillumination angles and the radar's incidence angle to the backscattering characteristics of buildings were analyzed.
  • Yuki Sagawa, Fumio Yamazaki, Wen Liu, Luis Moya
    Proceedings - 39th Asian Conference on Remote Sensing: Remote Sensing Enabling Prosperity, ACRS 2018 3 1668-1675 2018年  
    An earthquake of Mw 6.2 occurred in Kumamoto Prefecture, Kyushu Island, Japan at 21:26 on April14, 2016. About 28 hours after, another earthquake of Mw 7.0 occurred at 1:25 on April 16. Surface ruptures withlateral displacement of up to 2 m appeared along the Futagawa fault line. A large number of buildings andinfrastructures were severely damaged. For a prompt emergency response, it is important to grasp damage distributionat an early stage after the occurrence of an earthquake. The purpose of this research is to extract landslides andgeological effects caused by the Kumamoto earthquake using airborne Lidar data. Digital surface models (DSMs)acquired before and after the April 16 earthquake were employed to grasp slope failures in Mashiki town. A methodto extract landslides automatically was investigated by differentiating the DSMs at two time instants and thecharacteristics of the DSM difference in the area where landslides occurred were examined. Then the result ofautomatic extraction was compared with those from visual interpretation of aerial photographs. From this comparison,it is concluded that small landslides, which are difficult to locate from field survey or aerial-photo interpretation, aswell as large-scale ones, were extracted successfully from the DSM difference.
  • Fumio Yamazaki, Shuntaro Miyazaki, Wen Liu
    IGARSS 2018 - 2018 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM 2018-July 5685-5688 2018年  
    Unmanned Aerial Vehicles (UAVs) are becoming an efficient tool of image collection for affected areas due to natural disasters. In this study, UAV flights were carried out over a landslide affected site due to the July 2017 Northern Kyushu heavy rainfall in Japan. The UAV flights captured high-resolution still photos, and using them, three-dimensional (3D) models were developed based on a SfM (Structure-from-Motion) technique. The developed models could depict the damage situations vividly, and the location accuracy was evaluated through the comparison with the result of GPS measurements on the site.
  • リュウ ウェン, 澤可那子, 山崎文雄
    土木学会年次学術講演会講演概要集(CD-ROM) 72nd ROMBUNNO.IV‐139 2017年8月1日  
  • 須藤巧哉, 山崎文雄, 劉ウェン
    土木学会年次学術講演会講演概要集(CD-ROM) 72nd ROMBUNNO.I‐542 2017年8月1日  
  • 佐川由季, MOYA Luis, 山崎文雄, 劉ウェン
    土木学会年次学術講演会講演概要集(CD-ROM) 72nd ROMBUNNO.III‐172 2017年8月1日  
  • Kei Nakanishi, Wen Liu, Fumio Yamazaki
    38th Asian Conference on Remote Sensing - Space Applications: Touching Human Lives, ACRS 2017 2017-October 2017年  
    In this study, an accurate estimation of the crustal movement in the 2016 Kumamoto earthquake was attempted based on the relative GNSS positioning method with reference to 113 GEONET sites in Japan. Those GEONET sites were located from 100 km to 1,200 km away the epicenter. In order to evaluate the variations of permanent displacements in terms of baseline distance, the different stations were set as the base station. We processed the coordinate of the GEONET Kumamoto station, which is located approximately 5-km north from the epicenters of the MJMA 6.5 and MJMA 7.3 earthquakes, by the relative GNSS positioning in the period of April 14-17, 2016. The relationship between the performance of displacements and baseline distance was investigated. As a result, the range of 200-400 km baseline length achieved the most accurate measurement and the displacement distribution in this range was estimated using the GEONET Kumamoto station as the rover station.
  • Homa Zakeri, Fumio Yamazaki, Wen Liu
    38th Asian Conference on Remote Sensing - Space Applications: Touching Human Lives, ACRS 2017 2017-October 2017年  
    Polarized SAR images have been extensively used recently for monitoring urban and suburban areas. Since different polarizations represent different scattering coefficients of the same target, they can be used to prepare land cover maps, which contain vital information for several fields, such as environmental science, seismic risk assessment, urban management and planning. SAR amplitude data have been used mostly for obtaining the ground surface information whereas phase data can provide more information of the ground objects. Therefore, in this research, full polarized data of ALOS-2 PALSAR-2 with 5.13-m resolution in an ascending path were used to classify various land covers in Kumamoto, Japan. Accordingly, the Yamaguchi-4 decomposition was applied on the polarimetric dataset of the study area. Since the Yamaguchi-4 decomposition provides surface, volume, double bounce, and helix scatterings, it can be effective for classifying not only natural objects on the ground but also for man-made structures with different orientations. The Support Vector Machine (SVM) algorithm was used for supervised classification by the Yamaguchi-4 decomposition. The confusion matrix with the kappa coefficient, overall-, producer-, and user-accuracies were prepared for the classification results to be compared with the truth data. This research aims to explore the potential of the decomposition method for classifying various land covers of urban and suburban areas.
  • Fumio Yamazaki, Kasumi Kubo, Ryoto Tanabe, Wen Liu
    2017 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM (IGARSS) 2017-July 3182-3185 2017年  
    Unmanned Aerial Vehicles (UAVs) are becoming an efficient tool of high-resolution image collection for the places that are difficult to access or observe from the ground. In this study, UAV flights were carried out by the authors over various damage sites due to the 2016 Kumamoto, Japan earthquake, such as surface faulting, overturned tombstones, landslides, collapsed buildings and a bridge. The UAV flights captured high-resolution video footages and photos, and using them, three-dimensional (3D) models were developed based on a SfM (Structure-from-Motion) technique. The developed models could depict the damage situations vividly, and the accuracy was evaluated through comparison with aerial photos and field measurement results.
  • Fumio Yamazaki, Luis Moya, Wen Liu
    REMOTE SENSING TECHNOLOGIES AND APPLICATIONS IN URBAN ENVIRONMENTS II 10431 2017年  
    Extraction of collapsed buildings from a pair of Lidar data taken before and after the 2016 Kumamoto, Japan, earthquake was conducted. Lidar surveys were carried out for the affected areas along the causative faults by Asia Air Survey Co., Ltd. The density of the collected Lidar data was 1.5 - 2 points/m(2) for the first flight on April 15, 2016 and 3 - 4 points/m(2) for the second flight on April 23, 2016. The spatial correlation coefficient of the two Lidar data was calculated using a 101 x 101 pixels window (50 m x 50 m), and the horizontal shift of the April-23 digital surface model (DSM) with the maximum correlation coefficient was considered as the crustal movement by the April-16 main-shock. The horizontal component of the calculated coseismic displacement was applied to the post-event DSM to cancel it, and then the vertical displacement between the two DSMs was calculated. The both horizontal and vertical coseismic displacements were removed to extract collapsed buildings. Then building-footprints were employed to assess the changes of the DSMs within them. The average of difference between the pre- and post-event DSMs within a building footprint was selected as a parameter to evaluate whether a building is collapsed or not. The extracted height difference was compared with the spatial coherence value calculated from pre-and post-event ALOS-2 PALSAR-2 data and the result of field damage surveys. Based on this comparison, the collapsed buildings could be extracted well by setting a proper threshold value for the average height difference.
  • Fumio Yamazaki, Natsuki Samuta, Wen Liu
    2017 PROGRESS IN ELECTROMAGNETICS RESEARCH SYMPOSIUM - SPRING (PIERS) 2772-2778 2017年  
    Synthetic Aperture Radar (SAR) sensors onboard space-borne and airborne platforms are useful to survey the land-cover and condition of the earth surface. The Japan Aerospace Exploration Agency (JAXA) has been operating L-band radar systems both on satellites and air-crafts. The Polarimetric and Interferometric Airborne Synthetic Aperture Radar (Pi-SAR) L2 started its operation in 2012, as a successor of Pi-SAR-L (1996-2011). Pi-SAR-L2 carries an L-band radar of 85.0MHz band-width and can acquire images of very high slant-range resolution 1.76m with full (HH, HV, VV, VH) polarizations. In this study, a basic study on backscattering characteristics of a suburban area was carried out using full polarization data acquired by Pi-SAR-L2 flying over Miyagi prefecture, Japan. The texture measures of the SAR data were obtained by the Gray Level Co-occurrence Matrix (GLCM), which is one of the most well-known texture measures in the recent years. The selected major land-cover classes were trees, grasses, roads, water, paddy fields, buildings and solar panels. The result of supervised classification shows that the combined use of the backscattering intensity and their texture measures could obtain higher accuracy than using only the backscattering intensity.
  • Homa Zakeri, Wen Liu, Fumio Yamazaki
    37th Asian Conference on Remote Sensing, ACRS 2016 1 619-628 2016年  
    Monitoring land-cover of urban areas is a main issue in several fields such as urban planning and seismic risk assessment. Detecting built-up and bare land areas in arid or semi-arid regions is quiet difficult by using multi-spectral optical images because of similarity of the spectral characteristics of grounds and building materials. On the contrary, synthetic aperture radar (SAR) images have possibility to overcome this issue because the backscatter depends on the material and geometry of different surface objects. The use of L- and C-band SAR images may have possibility to provide more information of the same objects in urban areas. In this paper, dual polarized data from ALOS-2 PALSAR-2 (HH, HV) with 6.2-m resolution and Sentinel-1 C-SAR (VV, VH) with 13.9-m resolution were used for an unsupervised classification analysis of land-cover in Tehran city, Iran, which has been growing very fast recently. Although the result of classification from the SAR images was better than that from optical images, some noise still remained in the result. Hence texture information was added to improve the classification. The result, which showed less noise by combining the texture measures with the backscattering intensity, was then compared with the visual inspection result of a high-resolution optical image and a reasonable level of accuracy was confirmed.
  • Fumio Yamazaki, Rendy Bahri, Wen Liu, Tadashi Sasagawa
    LAND SURFACE AND CRYOSPHERE REMOTE SENSING III 9877 2016年  
    Satellite remote sensing is recognized as one of the effective tools for detecting and monitoring affected areas due to natural disasters. Since SAR sensors can capture images not only at daytime but also at nighttime and under cloud-cover conditions, they are especially useful at an emergency response period. In this study, multi-temporal high-resolution TerraSAR-X images were used for damage inspection of the Kathmandu area, which was severely affected by the April 25, 2015 Gorkha Earthquake. The SAR images obtained before and after the earthquake were utilized for calculating the difference and correlation coefficient of backscatter. The affected areas were identified by high values of the absolute difference and low values of the correlation coefficient. The post-event high-resolution optical satellite images were employed as ground truth data to verify our results. Although it was difficult to estimate the damage levels for individual buildings, the high resolution SAR images could illustrate their capability in detecting collapsed buildings at emergency response times.
  • Bruno Adriano, Erick Mas, Shunichi Koshimura, Hideomi Gokon, Wen Liu, Masashi Matsuoka
    International Geoscience and Remote Sensing Symposium (IGARSS) 2015-November 3579-3582 2015年11月10日  
    In this study, a practical methodology was presented to map damaged buildings using high resolution synthetic aperture radar (SAR) images and post-event building damage data from the 2013 Super Typhoon Haiyan, in Tacloban city, the Philippines. To detect destroyed structures, we focused on the changes in the radar signal within footprints of buildings between pre- and post-event SAR images. The method was tested using a 1.0 m resolution COSMO-SkyMed SAR images taken over Tacloban city, the Philippines. The method proves, with 73% accuracy in this case, to be suitable for estimating destroyed buildings.
  • Wen Liu, Fumio Yamazaki
    International Geoscience and Remote Sensing Symposium (IGARSS) 2015-November 4244-4247 2015年11月10日  
    A strong typhoon hit the Pacific coast of Japan from the night of October 15th to the morning of 16th, 2013, and caused huge damages, especially in Izu-Oshima island, Tokyo. Synthetic aperture radar (SAR), which can observe the earth surface despite of weather conditions, is an effective tool to grasp damage situation caused by typhoons. In this study, pre-event Pi-SAR-L and post-event Pi-SAR-L2 airborne radar images with full polarizations were used to detect landsides and debris flows in Izu-Oshima. First, the extraction of potential landslide areas was carried out using only the post-event image by land-cover classification and from the standardized difference polarization index (NDPI). Then the difference of backscattering intensity between the pre- and post-event SAR images was calculated to extract potential landslides. In addition, a 5-m resolution digital elevation model (DEM) was introduced to remove errors. Finally, the results were verified through the comparison with the result from visual interpretation.
  • Wen Liu, Luis Moya, Fumio Yamazaki
    Proceedings of the 2015 IEEE 5th Asia-Pacific Conference on Synthetic Aperture Radar, APSAR 2015 845-848 2015年10月23日  
    An Mw6.2 earthquake hit northern Nagano prefecture, Japan on November 22, 2014, with 46 people injured and a lot of damage to houses. Due to the fault movement, about 1-m displacement was observed by field surveys after the earthquake. Interferomatic SAR (InSAR) analysis has been confirmed as an effective tool to detect displacements in the centimeter level. In this study, the pre- and post-event ALOS-2 PALSAR-2 data were used to grasp the displacements around the Kamishiro Fault by the differential InSAR analysis. The slant range movements were obtained according to the phase differences. Then a fault model was built by introducing the parameters published by the Global Centroid-Moment-Tensor Catalog. A three-dimensional displacement was simulated using the fault model and it was compared with the observation result by a GPS ground station and at a strong-motion station.
  • 川村啓太, 山崎文雄, リュウ ウェン
    土木学会年次学術講演会講演概要集(CD-ROM) 70th ROMBUNNO.I-058 2015年8月1日  
  • リュウ ウェン, 水野真靖, 山崎文雄, 野中崇志, 笹川正
    土木学会年次学術講演会講演概要集(CD-ROM) 70th ROMBUNNO.I-063 2015年8月1日  
  • Wen Liu, Kentaro Suzuki, Fumio Yamazaki
    2015 Joint Urban Remote Sensing Event, JURSE 2015 2015年6月9日  
    Owing to the remarkable improvements that have been made in radar sensors, it becomes possible to obtain the information for a single structure from high-resolution SAR images. In our previous research, a method for detecting the heights of low-rise buildings automatically was proposed using 2D GIS data and a single high-resolution TerraSAR-X intensity image. However, this method is difficult to apply for high-rise buildings due to surface/material conditions of their exterior walls. In this study, a new method was developed for estimating the heights of high-rise buildings based on the results from an Interferometric SAR (InSAR) analysis. The characteristics of phases in the InSAR result were investigated and used for extracting the potential layover areas of target buildings. Then, the heights were estimated according to their layover lengths. The developed method was tested on two TerraSAR-X images for San Francisco, USA, in the HighSpot mode. Comparing the result with Lidar data, the detected heights were found to be reasonable.
  • Kazuki Inoue, Wen Liu, Marc Wieland, Tadashi Sasagawa, Fumio Yamazaki
    ACRS 2015 - 36th Asian Conference on Remote Sensing: Fostering Resilient Growth in Asia, Proceedings 2015年  
    After the Mw 9.0 Tohoku Earthquake on March 11, 2011, many bridges were damaged severely due to the tsunamis caused by the earthquake. Since the road network was fragmented, it was difficult to grasp the level of damage by field surveys alone. In order to provide emergency response quickly after an earthquake, the extraction of damaged areas at an early stage is very important. In this context, satellite images are useful for detecting damages over large areas after disasters. The objective of this study is to collect the damage information quickly by analyzing satellite images. SAR images, which can be obtained in cloudy weather or nighttime, were adopted in this study. TerraSAR-X images covering Sendai, Miyagi Prefecture, Japan, which were acquired on October 21, 2010 (pre-event), March 13 and 24, 2011 (post-event) were used for change extraction and analysis of bridge damages. The characteristics of the backscattering intensity were investigated by comparing with the damage situation. For collapsed bridges or scored embankments, it can be expected that the SAR backscatter decreases from the pre-event image to the post-event one, and the level of damage can be extracted by proper threshold values of backscatter and the results were compared with aerial/satellite optical images.
  • Risako Tsuchida, Wen Liu, Fumio Yamazaki
    ACRS 2015 - 36th Asian Conference on Remote Sensing: Fostering Resilient Growth in Asia, Proceedings 2015年  
    On April 25, 2015, an Mw7.8 earthquake struck the Gorkha district of Nepal. This earthquake caused serious damages to roads and rivers due to many landslides and avalanches. Particularly, numerous collapses of slopes occurred in the middle altitude zone of the northern Nepal due to mainly by the mainshock and some by aftershocks. Therefore the purpose of this study is to extract the landslides caused by the earthquake using satellite images. The pre- and post-event ALOS-2 PALSAR-2 images and Landsat 8 optical images were used in this purpose. PALSAR-2 is an active L-band microwave sensor to achieve cloud-free day-and-nighttime observation, so it is an extremely important source for early damage assessment when a disaster occurs in inaccessible mountain areas. We clarified the specific characteristics of landslide areas and performed an automated extraction method. Furthermore, the results were evaluated by comparing with that by visual interpretation of the optical images. By this comparison, large-scale landslides were extracted well from the PALSAR-2 images.
  • Rendy Bahri, Wen Liu, Fumio Yamazaki
    ACRS 2015 - 36th Asian Conference on Remote Sensing: Fostering Resilient Growth in Asia, Proceedings 2015年  
    Damage assessment is an important issue in emergency response and recovery after nature disasters. In this regard, satellite remote sensing is recognized as an effective tool for detecting and monitoring affected areas. Since SAR sensors can capture images not only at daytime but also at nighttime and under cloud-cover, they are useful for damage mapping. In this study, we used multi-temporal high-resolution ALOS-2 PALSAR-2 images to detect the affected areas in Katmandu, which was severely affected by the April 25, 2015 Nepal (Gorkha) Earthquake. ALOS-2 images obtained before and after the earthquake were utilized for calculating the difference and correlation coefficient of the SAR backscatter. The affected areas were identified by high values of the difference and low values of the correlation coefficient. The pre- and post-event high-resolution optical satellite images were employed as ground truth data to verify the extraction results. Although it was difficult to estimate the damage levels of individual buildings, the high-resolution L-band SAR images could illustrate their capability in assessing damage situation in a city block level.
  • ADRIANO Bruno, GOKON Hideomi, MAS Erick, KOSHIMURA Shunichi, LIU Wen, MATSUOKA Masashi
    日本地震工学シンポジウム論文集(CD-ROM) 14th ROMBUNNO.OS12-SAT-AM-6 2014年11月17日  
  • Wen Liu, Masashi Matsuoka, Bruno Adriano, Erick Mas, Shunichi Koshimura
    International Geoscience and Remote Sensing Symposium (IGARSS) 4828-4831 2014年11月4日  
    A strong typhoon "Haiyan" affected Southeast Asia on November 8, 2013, caused gigantic destruction in the Philippines. In this study, two pre- and one post-event COSMO-SkyMed SCSB data were used to detect the damaged area around Tacloban City, Leyte Island. First, the severe damaged areas were detected according to the difference between the pre- and post-event speckle divergence values. Then the pre- and co-event coherence (NDCI) and correlation coefficient (NDCOI) were calculated from the three temporal data. The relationships between the four building damage levels and NDCI or NDCOI value were obtained by introducing the visual interoperation result. Using this relationship, the possibility of each damage class was estimated in the whole urban area.
  • Bruno Adriano, Hideomi Gokon, Erick Mas, Shunichi Koshimura, Wen Liu, Masashi Matsuoka
    International Geoscience and Remote Sensing Symposium (IGARSS) 2154-2157 2014年11月4日  
    In this study, the extent of the flooded areas by the Super Typhoon Haiyan in the Philippines were extracted using ASTER VNIR images taken over Tacloban city in the Visayas. In order to constraint the affected area, we employed the normalize difference vegetation and water indices (NDVI and NDWI) from the pre- and post-event images. The extension of the flooded area was determined by comparing the index characteristics before and after the event. A phase-based change detection methoindicesd was applied to classify the affected area into three classes according to the changes between the pre- and post-images. Through NDWI the flooded areas were detected despite the moderate resolution of ASTER images. In addition, the phase-based analysis successfully detected level of change within the affected area that may be correlated to the damage observed on field surveys. The results from the phase-based analysis were verified with damage levels obtained through visual damage inspection using high resolution satellite images.
  • 篠原崇之, LIU Wen, 松岡昌志
    日本リモートセンシング学会学術講演会論文集 56th 2014年  
  • 篠原崇之, 松岡昌志, LIU Wen
    地域安全学会梗概集(CD-ROM) (35) 2014年  
  • Kentaro Suzuki, Wen Liu, Fumio Yamazaki
    35th Asian Conference on Remote Sensing 2014, ACRS 2014: Sensing for Reintegration of Societies 2014年  
    Building inventory is important information for monitoring urban development and evaluating risks from natural disasters. Building height is an essential element for inventory. Owing to the advancement of remote sensing technology, it is possible to detect building heights from high-resolution satellite images. In this study, the building heights in San Francisco, California, U.S.A. were estimated by an Interferometric SAR (InSAR) analysis and a geometric method from 1-m resolution TerraSAR-X's HighSpot data. Two Single Look Slant-Range Complex (SSC) data provided by the 2012 IEEE Date Fusion Contest were used. A flattened interferogram image was obtained after removing the phases caused by the elevation and baseline through the InSAR analysis. At first, the layover areas of buildings were extracted according to the phase information. Then, the building heights were calculated from the lengths of layover. The obtained result was verified by comparing with Lidar data, which was taken in June 2010. According to the comparison, the heights of high-rise buildings were found to be estimated successfully by the proposed method with high accuracy.
  • W. Liu, M. Matsuoka, F. Yamazaki, T. Nonaka, T. Sasagawa
    NCEE 2014 - 10th U.S. National Conference on Earthquake Engineering: Frontiers of Earthquake Engineering 2014年  
    Building damage such as to side-walls or mid-story collapse is often overlooked in vertical optical images. Hence, in order to observe such building damage modes, high-resolution SAR images are introduced considering the side-looking nature of SAR. In the 2011 Tohoku, Japan, earthquake, a large number of buildings were collapsed or severely damaged due to repeated tsunamis. One of the important tsunami effects on buildings is that the damage is concentrated to their side-walls and lower stories. Thus, this paper proposes the method to detect this kind of damage from the change in layover areas in SAR intensity images. The pre- and post-event TerraSAR-X images covering the Sendai-Shiogama Port were employed to detect building damage due to the tsunamis caused by the earthquake. Firstly, shape data of the layover areas for individual buildings were made according to the 2D Zenrin GIS data because the lengths of layover are proportional to the building height. The characteristics of the difference of backscattering coefficients between the pre- and post-event images were investigated using several sample buildings. Then the average value and the gradient in the cumulative curve of the difference were used to classify the possibility of side-wall damage and the damage level of buildings. These examples demonstrated the usefulness of high-resolution SAR images to detect severe damage to building side-walls from the changes of the backscattering coefficient in layover areas. Finally, the method was applied to the whole target area, and the accuracy was verified by comparing with a building damage map made by field surveys.
  • Fumio Yamazaki, Konomi Hara, Wen Liu
    IMAGE AND SIGNAL PROCESSING FOR REMOTE SENSING XX 9244 2014年  
    Using a dataset from the 2013 IEEE data fusion contest, a basic study to classify urban land-cover was carried out. The spectral reflectance characteristics of surface materials were investigated from the airborne hyperspectral (HS) data acquired by CASI-1500 imager over Houston, Texas, USA. The HS data include 144 spectral bands in the visible to near-infrared (380 nm to 1050 nm) regions. A multispectral (MS) image acquired by WorldView-2 satellite was also introduced in order to compare it with the HS image. A field measurement in the Houston's test site was carried out using a handheld spectroradiometer by the present authors. The reflectance of surface materials obtained by the measurement was also compared with the pseudo-reflectance of the HS data and they showed good agreement. Finally a principal component analysis was conducted for the HS and MS data and the result was discussed.
  • 篠原崇之, LIU Wen, 松岡昌志
    日本リモートセンシング学会学術講演会論文集 55th 2013年  
  • Wen Liu, Fumio Yamazaki
    Joint Urban Remote Sensing Event 2013, JURSE 2013 33-36 2013年  
    Due to the remarkable improvements that have been made in radar sensors, high-resolution SAR images are now available, thus providing detailed ground surface information. In this study, a new method is developed to detect building heights automatically using 2D GIS data and a single high-resolution TerraSAR-X (TSX) intensity image. A building in a SAR image shows a layover from the actual position in the direction of the sensor, due to the side-looking nature of SAR. Since the length of the layover is proportional to the height of the building, it can be used to estimate the building height. To do this, we shift the building shape obtained from 2D GIS data in the direction of the sensor. The proposed method was tested on a TSX image of San Francisco, U.S.A. in HighSpot mode, using a resolution of about 1 m. Comparing the result with that obtained using Lidar data, the RMS error was found to be less than 3 m, which is about the height of one building story. © 2013 IEEE.
  • Wen Liu, Masashi Matsuoka, Fumio Yamazaki, Takashi Nonaka, Tadashi Sasagawa
    34th Asian Conference on Remote Sensing 2013, ACRS 2013 4 3744-3751 2013年  
    The Mw 6.1 earthquake affected Christchurch, New Zealand (NZ) on February 21, 2011. It caused widespread damage across the city, especially in the central area. Significant liquefaction occurred widely, which caused ground movement and destroyed lifelines and structures. In this study, the pre- And post-event ALOS/PALSAR and TerraSAR-X (TSX) data are used to detect the ground movements and liquefied areas. Firstly, the differential interferometric analysis (DInSAR) was applied to both the PALSAR and TSX data. The crustal movement caused by the earthquake was estimated by combining the two DInSAR results. Then the coherence value was used to detect the liquefied areas. Intensity images were also introduced to modify the detected result. Finally, the detected liquefied areas were verified by a liquefaction map which was made by field surveys. Copyright © (2013) by the Asian Association on Remote Sensing.
  • Kentaro Suzuki, Wen Liu, Miguel Estrada, Fumio Yamazaki
    34th Asian Conference on Remote Sensing 2013, ACRS 2013 2 1649-1656 2013年  
    In conducting damage assessment for scenario earthquakes in high seismic risk regions, building inventory data are required as well as building fragility functions and strong-motion distributions. But inventory data with the locations and characteristics of buildings are not so easy to construct, especially for developing countries. Hence in this study, an approach to construct building inventory data is sought as an alternative of cadastral data and field surveys. Using a high-resolution optical satellite image acquired by WorldView-2, this paper tries to develop building inventory data for earthquake damage assessment in Tacna, Peru. First, Pixel-based classification was carried out to examine basic land-cover and land-use of the urban area. Object-based building extraction was then conducted for three selected areas as an attempt to develop building inventory data.
  • Konomi Hara, Wen Liu, Fumio Yamazaki, Kentaro Suzuki, Yoshihisa Maruyama
    34th Asian Conference on Remote Sensing 2013, ACRS 2013 2 994-1001 2013年  
    Hyperspectral remote sensing makes it possible to obtain detailed spectral information of surface objects. Using airborne hyperspectral (HS) data acquired over Houston, Texas, USA, provided by the 2013 IEEE data fusion contest, the spectral reflectance characteristics of surface materials were investigated. A multispectral (MS) image acquired by WorldView-2 satellite was also introduced and it was compared with the HS image. A field measurement using a handheld spectroradiometer (EKO MS-720) was also carried out by the present authors. The irradiances of surface materials obtained by the measurement were also compared with the digital numbers of the 144 HS bands. Finally supervised classification was conducted for the HS and MS data and their results were discussed.

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