综合光谱和时间特征的地表水提取方法

Yebin Zou
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摘要

遥感技术已被用于观测大面积地表水,以获得更高分辨率和长期连续的地表水观测记录。然而,主要由于水面特征在空间和时间上的高变异性,对大面积和多时空地表水的探测仍然存在局限性。在本研究中,我们开发了一种地表水遥感信息提取模型,该模型综合了光谱和时间特征,可从大地遥感卫星长期场景的多维数据中提取地表水,以探索几十年来地表水的时空变化。目标是从中等分辨率遥感图像中提取植被、云层、地形阴影和其他土地覆盖背景中的开放水域。经验证,分类的平均总体准确率和平均卡帕系数分别为 0.91 和 0.81。应用于中国内陆干旱地区的实验表明,该方法在复杂的地表环境条件下是有效的。
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A Surface Water Extraction Method Integrating Spectral and Temporal Characteristics
Remote sensing has been applied to observe large areas of surface water to obtain higher-resolution and long-term continuous observation records of surface water. However, limitations remain in the detection of large-scale and multi-temporal surface water mainly due to the high variability in water surface signatures in space and time. In this study, we developed a surface water remote sensing information extraction model that integrates spectral and temporal characteristics to extract surface water from multi-dimensional data of long-term Landsat scenes to explore the spatiotemporal changes in surface water over decades. The goal is to extract open water in vegetation, clouds, terrain shadows, and other land cover backgrounds from medium-resolution remote sensing images. The average overall accuracy and average kappa coefficient of the classification were verified to be 0.91 and 0.81, respectively. Experiments applied to China’s inland arid area have shown that the method is effective under complex surface environmental conditions.
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