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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Urban surface water body detection with suppressed built-up noise based on water indices from Sentinel-2 MSI imagery
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Urban surface water body detection with suppressed built-up noise based on water indices from Sentinel-2 MSI imagery

机译:城市地表水体检测,基于Sentinel-2 MSI Imagery的水指数抑制内置噪声

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摘要

Water spectral indices can enhance the difference between water bodies and background features. Thus, they have been widely used to extract and map surface water bodies based on multispectral satellite imagery. The urban scene is very heterogeneous since the surface is composed of a vast diversity of man-made objects, often of mixed distribution. Urban surface water mapping faces an extreme overestimation phenomenon because certain types of objects such as shadow, dark roads and some artificial features may return similar values to water bodies after an index computation. This study proposes a noise-prediction strategy to eliminate such misclassified nonwater areas in an automated way. Constrained energy minimization (CEM), a typical sparse target detection algorithm that does not need any background information, is utilized to draw the possible distribution of noise based on prior noise samples. The initial noise samples are automatically extracted by calculating the difference between two water indices widely accepted in urban scenes, namely, the modified normalized difference water index (MNDWI) and the automated water extraction index (AWEI). Recently freely available Sentinel-2 multi spectral satellite imagery, with high spatial resolution (up to 10 m) and high repeated global coverage (every 5 days), was adopted, considering its potential on urban land cover mapping. Compared with the AWEI based approach, the results show that the proposed noise-prediction approach obtained an improved overall accuracy (increased Kappa coefficient by 0.07 on average), dramatically enhanced user accuracy (by 12.47% on average) with reduced noise, and simultaneously slightly decreased producer accuracy (by -1.19% on average). That is, the proposed method possesses an improvement of the misclassification of nonwater bodies to water bodies and a suppression of the missing of water body extraction at the same time. Finally, the comparative results, with the varying water index segm
机译:水谱指标可以增强水体和背景特征之间的差异。因此,它们已被广泛用于提取和地图基于多光谱卫星图像的地面水体。城市场景是非常异构的,因为该表面由巨大的人造物体组成,通常是混合分布。城市地表水映射面临极端高估现象,因为某些类型的物体如阴影,黑暗道路和一些人工特征可能会在指数计算之后将类似的值与水体返回。本研究提出了一种以自动化方式消除这种错误分类的非水域的噪声预测策略。限制能量最小化(CEM),利用不需要任何背景信息的典型稀疏目标检测算法来基于先前噪声样本来利用可能的噪声分布。通过计算城市场景中广泛接受的两个水指数之间的差异,即改进的归一化差异水指数(MNDWI)和自动化水提取指数(AWEI)来自动提取初始噪声样本。最近可用的Sentinel-2多光谱卫星图像,采用高空间分辨率(最多10米)和高重复的全球覆盖(每5天),考虑到其城市陆地覆盖映射潜力。与基于AWEI的方法相比,结果表明,所提出的噪声预测方法获得了提高的整体精度(平均增加了κ系数0.07),大大提高了用户准确性(平均平均12.47%),噪声减少,略微略微降低生产者准确性(平均平均达到-1.19%)。也就是说,该方法具有改善对水体的错误分类,并同时抑制水体萃取缺失。最后,比较结果,随着不同的水指数SEGM

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