Textural Classification of Forest Types from Landsat 7 Imagery

O. Butusov
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引用次数: 21

Abstract

A method was developed for using textural, brightness, and spectral indices for the classification of forest valuation tracts on the basis of space imagery. The textural characteristics were determined by applying a discrete wavelet transform and with use of a textural matrix, on the basis of which the following textural indices were determined: energy, standard deviation, inertia, entropy, homogeneity factor, cluster shade (asymmetry), cluster prominence, and cluster correlation information measure. An unsupervised classification of valuation tracts was made for a space image of a test area within the Bulun forested sector of the Zhigansk forest management area registered by the Landsat 7 satellite. The use of textural indices alone for classification purposes proved to be inadequate. Satisfactory results were obtained only with the joint use of both textural and brightness spectral indices.
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基于Landsat 7影像的森林类型纹理分类
提出了一种基于空间影像的纹理、亮度和光谱指数对森林价值域进行分类的方法。利用离散小波变换和纹理矩阵确定纹理特征,在此基础上确定纹理指标:能量、标准差、惯性、熵、均匀性因子、聚类阴影(不对称)、聚类突出和聚类相关信息测度。对由地球资源卫星7号卫星登记的日甘斯克森林管理区布伦森林区域内一个试验区的空间图像进行了估价区无监督分类。事实证明,仅使用质地指数进行分类是不够的。只有同时使用纹理和亮度光谱指标,才能得到满意的结果。
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