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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >A novel surface water index using local background information for long term and large-scale Landsat images
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A novel surface water index using local background information for long term and large-scale Landsat images

机译:一种新的地表水指数,使用局部背景信息进行长期和大规模兰德拉特图像

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摘要

Surface water plays a vital role in natural environment and human development. The research of water extraction method using remote sensing image is a hot topic, which has been widely developed in water index, classification, subpixel, and other aspects. Compared with other methods, a water-index based method has the advantages of fast speed and convenience. The characteristics of surface water, such as wide coverage and instability, make the water index stand out in monitoring large area of surface water. However, land surface in water environment is complex, and the main factors that reduce water extraction accuracy are also different, such as shadow in urban areas and water leakage in unshaded areas. The current index is bound to weaken the information in the water body when suppressing shadows, and vice versa. To address these issues, contrast difference water index (CDWI) and shadow difference water index (SDWI) are proposed in this paper by improving the modified normalized difference water index (MNDWI). CDWI is used to enhance water information, which is suitable for areas without building shadows. SDWI is used to eliminate the shadow of buildings, which is suitable for urban areas. Moreover, background difference water index (BDWI) was proposed by combining the advantages of CDWI and SDWI through a background regularizer B, which is used to extract surface water under complex background. The regularizer B represents the similarity between local background features of the image and the reference urban area, which is used to locally weight SDWI and CDWI, so that BDWI can automatically enhance the water body in the shadowless area and eliminate the shadow of buildings. The water extraction results of BDWI, MNDWI, the tasseled cap wetness index (TCW), the automatic water extraction index (AWEInsh, AWEIsh), and the water index 2015 (WI2015) were used for comparison. Other methods tend to perform well only in built-up areas or non-built-up areas, while the BDWI can extract surface water under various backgrounds with high accuracy and stability. The overall accuracy produced by the BDWI was 91.58-97.57%, CDWI was 84.85-97.09%, SDWI was 81.63-94.40%, MNDWI was 80.19-95.64%, TCW was 82.33-95.98%, AWEIsh was 87.50-96.37%, AWEInsh was 80.59-98.78%, and WI2015 was 78.24-98.38%. Combining water index with image local information is helpful to improve the accuracy of water extraction in large and complex environment. Finally, surface water in Jiangsu Province, China was extracted through BDWI and the changes in 1985, 2000, and 2015 were analyzed.
机译:地表水在自然环境和人类发展中起着至关重要的作用。使用遥感图像的水提取方法的研究是一种热门话题,它已被广泛开发的水指数,分类,子像素等方面。与其他方法相比,基于水指数的方法具有快速和便利性的优点。地表水的特点,如广泛覆盖和不稳定,使水指数突出监测大面积水域。然而,水环境中的陆地面是复杂的,降低水提取精度的主要因素也不同,例如城市地区的阴影和未横盘区域的漏水。当前指数必将在抑制阴影时削弱水体中的信息,反之亦然。为了解决这些问题,通过改善修改的归一化差异水指数(MNDWI),本文提出了对比差差水指数(CDWI)和阴影差水指数(SDWI)。 CDWI用于增强水信息,适用于没有建筑阴影的区域。 SDWI用于消除建筑物的阴影,适合城市地区。此外,通过将CDWI和SDWI的优点通过背景规范化器B组合来提出了背景差异水指数(BDWI),其用于在复杂背景下提取地表水。常规器B表示图像的本地背景特征与参考城市区域之间的相似性,该参考城市区域用于局部重量SDWI和CDWI,使得BDWI可以自动增强无影区域中的水体并消除建筑物的阴影。使用BDWI,MNDWI,流苏帽湿度指数(TCW),自动水提取指数(AWEIDSH,AWEISH)和水指数2015(WI2015)的水提取结果进行比较。其他方法倾向于仅在内置区域或非内置区域中表现得很好,而BDWI则可以以高精度和稳定性提取各种背景下的地表水。 BDWI生产的整体准确性为91.58-97.57%,CDWI为84.85-97.09%,SDWI为81.63-94.40%,MNDWI为80.19-95.64%,TCW为82.33-95.98%,令人敬畏为87.50-96.37%,艾eeinsh是80.59-98.78%,WI2015为78.24-98.38%。将水指数与图像本地信息组合有助于提高大型和复杂环境中的水提取的准确性。最后,江苏省的地表水通过BDWI提取,分析了1985年,2000年和2015年的变化。

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