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Water body extraction based on region similarity combined adaptively band selection

机译:基于区域相似性的水体提取组合适应性频带选择

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摘要

Water monitoring is an important part of water resource protection. The extraction of water body from multispectral remote-sensing images has been proven to be an efficient and fast way for water monitoring. This paper presents a water body extraction algorithm from multispectral remote-sensing image based on region similarity and boundary information by combining adaptive band selection and over-segmentation. First of all, three bands are adaptively chosen by similarity-based band selection algorithm. Then, the image domain is partitioned into a series of homogeneous sub-regions by over-segmentation incorporating spectral and spatial information. On the sub-regions, the regional similarity is defined with respect to the similarities of texture and spectral features which are extracted using structure analysis method. After that, boundary information is extraction by Canny algorithm, then the water body is extracted by using the Fractal Net Evolution Approach (FNEA) which combines regional similarity and boundary information. The proposed algorithm is used to extract six water bodies with different complex texture backgrounds from multispectral sensors. According to the accuracy evaluation of water body extraction results, the overall accuracy (OA) is higher than 97.9100% and all Kappa coefficients (K) are up to 0.9436. We calculated the relative error (RE) of the area between the reference water body and the water body extracted by the proposed algorithm, the minimum and maximum relative error range is between [0.6180%, 7.7050%]. The experiments show that the proposed algorithm is feasible and effective.
机译:水监测是水资源保护的重要组成部分。已经证明了从多光谱遥感图像中的水体提取是一种有效和快速的水监测方式。本文通过组合自适应频带选择和过分基于区域相似性和边界信息,提出了一种来自多光谱遥感图像的水体提取算法。首先,由基于相似性的频带选择算法自适应地选择三个频带。然后,通过结合光谱和空间信息,通过过分分割将图像域分成一系列均匀子区域。在子区域上,关于使用结构分析方法提取的纹理和光谱特征的相似性来定义区域相似性。之后,边界信息由罐头算法提取,然后通过使用结合区域相似性和边界信息的分形净进化方法(FNEA)提取水体。所提出的算法用于提取来自多光谱传感器的不同复杂纹理背景的六个水体。根据水体提取结果的精度评估,总精度(OA)高于97.9100%,所有Kappa系数(k)均高达0.9436。我们计算了由所提出的算法提取的参考水体和水体之间的区域的相对误差(RE),最小和最大相对误差范围在[0.6180%,7.7050%]之间。实验表明,该算法是可行和有效的。

著录项

  • 来源
    《International journal of remote sensing》 |2021年第8期|2963-2980|共18页
  • 作者单位

    Liaoning Tech Univ Sch Geomat Inst Remote Sensing Sci & Applicat Fuxing 123000 Peoples R China;

    Liaoning Tech Univ Sch Geomat Inst Remote Sensing Sci & Applicat Fuxing 123000 Peoples R China;

    NASG Satellite Surveying & Mapping Applicat Ctr Beijing Peoples R China;

    Liaoning Tech Univ Sch Geomat Inst Remote Sensing Sci & Applicat Fuxing 123000 Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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