• Normal Distribution Probability Based Thresholding for Segmenting Remote Sensing Index Images: A Case Study of the Xiaolongtan Mining Area, China
    編號:330 稿件編號:382 訪問權限:僅限參會人 更新:2022-06-05 16:15:12 瀏覽:363次 口頭報告

    報告開始:2022年05月27日 14:00 (Asia/Shanghai)

    報告時間:20min

    所在會議:[S3] Energy and Sustainable Green Development [S3-3.3] Energy and Sustainable Green Development-3.3

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    摘要
    Coal resources are an important guarantee for socioeconomic development, but the exploitation of coal resources is often accompanied by serious damage to the ecological environment. There is therefore an urgent need to monitor the ecological environment of mining areas. In the current monitoring processes, while the thresholding method segments remote sensing index images to extract target features, threshold values are usually determined by empirical judgment or other methods. Such subjectiveness undermines the accuracy of the method and its application for long-term monitoring. To address the issue, we propose a normal distribution probability-based threshold segmentation method. It can greatly reduce the influence of subjective factors and improve the accuracy of feature extraction. This method was tested to Landsat 8 data over the Xiaolongtan mining area, southwest China for determining the threshold values of normalized difference vegetation index (NDVI), modified normalized difference water index (MNDWI), and normalized difference coal mine index (NDCMI) for extracting vegetation, water, and coal respectively. The test result was consistent with our field observation of the mining area. It is concluded that the proposed probability-based threshold segmentation method is practical and effective and can be used for monitoring the ecological environment of mining areas.
    關鍵字
    thresholding segmentation,NDVI,MNDWI,NDCMI,coal,mining area
    報告人
    Heng NI
    China University of Mining and Technology

    稿件作者
    衡 倪 中國礦業大學
    李 龍 中國礦業大學;布魯塞爾自由大學
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