State Key Laboratory of Hydraulics and Mountain River Engineering, Sichuan University, Chengdu, 610065, China.
College of Hydraulic and Hydroelectric Engineering, Sichuan University, Chengdu, 610065, China.
Environ Sci Pollut Res Int. 2021 Jun;28(21):27067-27083. doi: 10.1007/s11356-021-12552-2. Epub 2021 Jan 27.
As the remote sensing technology develops, there are increasingly more kinds of remote sensing images available from different sensors. High-resolution remote sensing images are widely used in the detection of land cover/land change due to their plenty of characteristics of a specific feature in terms of spectrum, shape, and texture. Current studies regarding cultivated land resources that are the material basis for the human beings to survive and develop focus on the method to accurately obtain the quantity of cultivated land in a region and understand the conditions and the trend of change of the cultivated land. Pixel-based method and object-oriented method are the main methods to extract cultivated land in remote sensing field. Pixel-based method ignores high-level image information, while object-oriented method takes the image spot after image segmentation as the basic unit of information extraction, which can make full use of spectral features, spatial features, semantic features, and contextual features. Image segmentation is a key step of object-oriented method; the core problem is how to obtain the optimal segmentation scale. Traditional methods for determining the optimal segmentation scale of features (such as the homogeneity-heterogeneity method, the maximum area method, and the mean variance method), in which only the spectral and geometrical characteristics are considered, while the textural characteristics are neglected. Based on this, the Quickbird and unmanned aerial vehicle (UAV) images obtained in Xiyu Village, Pengzhou City, Sichuan Province, China, were selected as experimental objects, and the texture mean and spectral grayscale mean method (MANC method based on GLCM), which comprehensively considered the spectrum, shape, and texture features, was proposed to calculate the optimal segmentation scale of cultivated land in the study area. The error segment index (ESI) and centroids distance index (CDI) were adopted to evaluate image segmentation quality based on the method of area and position differences. The experimental results show that the MANC method based on GLCM can obtain higher segmentation precision than the traditional methods, and the segmentation results are in good agreement with the cultivated land boundary obtained by visual interpretation.
随着遥感技术的发展,不同传感器获取的遥感影像种类越来越多。高分辨率遥感影像由于具有丰富的光谱、形状和纹理特征,在土地覆盖/土地变化检测中得到了广泛应用。当前关于耕地资源的研究主要集中在如何准确获取区域耕地数量以及了解耕地的状况和变化趋势上,耕地资源是人类生存和发展的物质基础。基于像元的方法和基于对象的方法是遥感领域提取耕地的主要方法。基于像元的方法忽略了高层图像信息,而基于对象的方法以图像分割后的图像斑为信息提取的基本单元,可以充分利用光谱特征、空间特征、语义特征和上下文特征。图像分割是基于对象方法的关键步骤,核心问题是如何获得最佳的分割尺度。传统的特征最优分割尺度确定方法(如同质-异质法、最大面积法和均值方差法)只考虑了光谱和几何特征,而忽略了纹理特征。基于此,选择中国四川省彭州市西峪村的 Quickbird 和无人机(UAV)图像作为实验对象,提出了一种综合考虑光谱、形状和纹理特征的纹理均值和光谱灰度均值方法(基于 GLCM 的 MANC 方法),用于计算研究区耕地的最优分割尺度。采用面积和位置差异法的误差分割指数(ESI)和质心距离指数(CDI)来评价图像分割质量。实验结果表明,基于 GLCM 的 MANC 方法比传统方法能获得更高的分割精度,且分割结果与目视解译得到的耕地边界吻合较好。