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High-Resolution Mapping of Urban Surface Water Using ZY-3 Multi-Spectral Imagery

机译:使用ZY-3多光谱图像对城市地表水进行高分辨率制图

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Accurate information of urban surface water is important for assessing the role it plays in urban ecosystem services under the content of urbanization and climate change. However, high-resolution monitoring of urban water bodies using remote sensing remains a challenge because of the limitation of previous water indices and the dark building shadow effect. To address this problem, we proposed an automated urban water extraction method (UWEM) which combines a new water index, together with a building shadow detection method. Firstly, we trained the parameters of UWEM using ZY-3 imagery of Qingdao, China. Then we verified the algorithm using five other sub-scenes (Aksu, Fuzhou, Hanyang, Huangpo and Huainan) ZY-3 imagery. The performance was compared with that of the Normalized Difference Water Index (NDWI). Results indicated that UWEM performed significantly better at the sub-scenes with kappa coefficients improved by 7.87%, 32.35%, 12.64%, 29.72%, 14.29%, respectively, and total omission and commission error reduced by 61.53%, 65.74%, 83.51%, 82.44%, and 74.40%, respectively. Furthermore, UWEM has more stable performances than NDWI’s in a range of thresholds near zero. It reduces the over- and under-estimation issues which often accompany previous water indices when mapping urban surface water under complex environmental conditions.
机译:准确的城市地表水信息对于评估其在城市化和气候变化的内容下在城市生态系统服务中的作用至关重要。然而,由于先前的水指数的限制和黑暗的建筑阴影效应,使用遥感对城市水体进行高分辨率监测仍然是一个挑战。为了解决这个问题,我们提出了一种自动城市用水提取方法(UWEM),该方法结合了新的用水指数和建筑物阴影检测方法。首先,我们使用中国青岛的ZY-3图像训练了UWEM的参数。然后,我们使用其他五个子场景(阿克苏,福州,汉阳,黄埔和淮南)ZY-3图像验证了该算法。将该性能与归一化差水指数(NDWI)进行了比较。结果表明,UWEM在子场景中表现更好,kappa系数分别提高了7.87%,32.35%,12.64%,29.72%,14.29%,总遗漏和佣金误差减少了61.53%,65.74%,83.51% ,82.44%和74.40%。此外,在接近零的阈值范围内,UWEM的性能比NDWI更稳定。在复杂环境条件下绘制城市地表水时,它减少了通常伴随以前的水指标而出现的高估和低估问题。

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