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Texture feature extraction of mountain economic forest using high spatial resolution remote sensing images

机译:高空间分辨率遥感图像纹理特征提取山经济林

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The inventory of economic forest planting on mountainous area is of great interest for the shareholders, ecologists, and governors. This study presents a novel object-based remote sensing image texture extraction method to aid the classification of mountain economic forest. Whereas the texture pattern of man-planted forest on mountainous area are similar with human fingerprint on remote sensing images, then we integrated the fingerprint recognition method with the image object-based GLCM (gray-level co-occurrence matrix) texture extraction method to classify economic forest plantation. The given method firstly enhances the texture feature of segmented image objects using a 2D Gabor filter; and then carries out an image binaryzation process to the filtered image objects; it lastly uses GLCM to calculate the texture characteristics of each image object. The classification result of the presented method shows a considerable classification accuracy increment comparing to the image object-based GLCM texture extraction method.
机译:在山区种植的经济林地区库存对股东,生态学家和州长有益。本研究提出了一种新的基于对象的遥感图像纹理提取方法,以帮助山地经济林分类。虽然山区人口森林的纹理图案与遥感图像上的人类指纹类似,但我们将指纹识别方法与基于图像对象的GLCM(灰级共有矩阵)纹理提取方法集成为分类经济森林种植园。给定的方法首先使用2D Gabor滤波器增强分段图像对象的纹理特征;然后向滤波的图像对象执行图像二进制流程;它最后使用GLCM计算每个图像对象的纹理特征。呈现方法的分类结果显示了与基于图像对象的GLCM纹理提取方法相当相当大的分类精度增量。

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