基于水指数技术提取陆地卫星遥感影像水体特征的时间序列分析

B. C. Naik, B. Anuradha
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引用次数: 1

摘要

近年来,遥感数据被广泛用于从卫星图像中提取水体。从卫星图像中提取的水体特征的精度评估与实时数据高度相关。2014 - 2019年印度nagarjunasagar水库时空变化及其多时相Landsat-8 (OLI)影像分析对NDVI、NDWI、MNDWI和awi等非监督分类(Isodata)和光谱水体索引方法在地表水水体提取和变化检测中的应用进行了评价。对水标度方法的总体精度和kappa系数进行了评价。准确率结果的统计参数表明,awi总体准确率为96.26%,kappa系数为0.94;MNDWI总体准确率为96.94%,kappa系数为0.95。与其他水分指数方法相比,awi和MNDWI水分指数的效果更好。
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Time Series Analysis of Water Feature Extraction using Water Index Techniques from Landsat Remote Sensing Images
Recently, the remote sensing data is widely used for the extraction of water body from the satellite images. The accuracy assessment of the extracted water features from the satellite images is highly correlated with the real time data. Spatiotemporal changes in nagarjunasagar reservoir, located in India in a period of 2014 to 2019 time series and analysis using multi temporal Landsat-8 (OLI) images. Unsupervised classification (Isodata) and spectral water indexing methods, including NDVI, NDWI, MNDWI and AWEI were evaluated for surface water body extraction and change detection. The overall accuracy and kappa coefficients were evaluated for water indexing methods. The statistical parameters of the accuracy results show that AWEI achieved 96.26% overall accuracy, 0.94 kappa coefficient and MNDWI achieved 96.94% overall accuracy, 0.95 kappa coefficient. The AWEI and MNDWI water indexes performed better results as compared to other water indexing methods.
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