• Remote Sensing Technology and Application
  • Vol. 39, Issue 5, 1115 (2024)
Xiaokun GUAN, Xinsheng ZHANG, Luyang ZAN, Pan CHEN..., Zhaoming WU, Yunfan XIANG and Mingyong CAI|Show fewer author(s)
Author Affiliations
  • Airborne Remote Sensing Center, Aerospace Information Research Institute, Chinese Academy of Sciences,Beijing100094,China
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    DOI: 10.11873/j.issn.1004-0323.2024.5.1115 Cite this Article
    Xiaokun GUAN, Xinsheng ZHANG, Luyang ZAN, Pan CHEN, Zhaoming WU, Yunfan XIANG, Mingyong CAI. A Multi-Class Object-Level Change Detection Method for Identifying Human Disturbance in Ecological Red Line Areas[J]. Remote Sensing Technology and Application, 2024, 39(5): 1115 Copy Citation Text show less

    Abstract

    The delineation of ecological red lines, which define areas where industrialization and urbanization are prohibited, holds great significance for environmental conservation. To ensure the protection of ecological red line areas, it is essential to identify human disturbances accurately. Traditional methods face challenges in precisely detecting land cover changes caused by human interference and distinguishing the classes of objects before and after the changes. Segmatic change detection methods based on deep learning suffer from issues such as excessive false positives and difficulties in obtaining training samples. To address these challenges, this paper proposes a multi-class object-level change detection method for precise identification of human disturbances within ecological red line areas. The proposed method consists of two parts: object-level binary change detection and scene classification. The object-level binary change detection network utilizes YOLOv5 as the underlying framework to extract features from the pre- and post-change images, fuse the features, and output the changed regions in the form of bounding boxes. The scene classification network, based on MobileNet v2, accurately classifies the pre-change and post-change images corresponding to the changed regions. High-resolution satellite images from the Li River Ecological Protection Zone are used as the dataset to identify 27 types of human disturbance activities. Experimental results demonstrate that the object-level change detection network achieves APIoU=.50 of 68.8% and APIoU=.50:.05:.95 of 57.2% for change region extraction. The top-1 accuracy for human disturbance activity recognition reaches 91.81%, and the top-5 accuracy reaches 99.83%. The results indicate that the two-step approach of object-level change detection and scene classification improves the effectiveness of change region extraction and overcomes the limitation of insufficient training samples for multi-class change detection. This approach provides effective support for the identification of human disturbance activities in ecological red line areas.
    Xiaokun GUAN, Xinsheng ZHANG, Luyang ZAN, Pan CHEN, Zhaoming WU, Yunfan XIANG, Mingyong CAI. A Multi-Class Object-Level Change Detection Method for Identifying Human Disturbance in Ecological Red Line Areas[J]. Remote Sensing Technology and Application, 2024, 39(5): 1115
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