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A KNOWLEDGE-BASED METHOD FOR ROAD DAMAGE DETECTION USING HIGH-RESOLUTION REMOTE SENSING IMAGE

机译:一种基于知识的道路损伤检测方法,使用高分辨率遥感图像

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Road damage detection from high-resolution remote sensing image is critical for natural disaster investigation and disaster relief. In a disaster context, the pair of pre-disaster and post-disaster road data for change detection are difficult to obtain due to the mismatch of different data sources, especially for rural areas where the pre-disaster data (i.e. remote sensing imagery or vector map) are hard to obtain. In this study, a knowledge-based method for road damage detection solely from post-disaster high-resolution remote sensing image is proposed. The road centerline is firstly extracted based on the preset road seed points. Then, features such as road brightness, standard deviation, rectangularity, aspect ratio are selected form a knowledge model. Finally, under the guidance of the road centerline, the post-disaster roads are extracted and the damaged roads were detected by applying the knowledge model. The newly developed method is evaluated using a WorldView-1 image over Wenchuan, China acquired three days after the earthquake in May 15, 2008. The results show that the producer's accuracy (PA) and user's accuracy (UA) reached about 90% and 85% respectively, indicating that the proposed method is effective for road damage detection. This approach also significantly reduces the need for pre-disaster remote sensing data.
机译:高分辨率遥感图像的道路损伤检测对于自然灾害调查和救灾至关重要。在灾难背景下,由于不同的数据源不匹配,这对变更检测的灾后预测和灾后路数据难以获得,特别是对于灾害预数据(即遥感图像或向量)地图)很难获得。在这项研究中,提出了一种基于知识的道路损伤检测方法,仅来自灾后的高分辨率遥感图像。首先基于预设的道路种子点提取道路中心线。然后,选择诸如道路亮度,标准偏差,矩形,宽高比的特征,形成知识模型。最后,在道路中心线的指导下,灾后道路被提取,并通过应用知识模型来检测损坏的道路。在2008年5月15日在地震发生后三天内获得了汶川的世界观-1形象,评估了新开发的方法。结果表明,生产者的准确性(PA)和用户的准确性(UA)达到约90%和85分别为百分比,表明所提出的方法对于道路损伤检测有效。这种方法也显着降低了对灾后遥感数据的需求。

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