基于自适应稀疏融合分类器的土地覆盖图像分类

A. Anwar, D. Menaka
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引用次数: 0

摘要

由于遥感影像中存在大量的光谱波段,导致难以识别不同的土地覆盖区域。土地覆盖分类是近年来在卫星图像处理中应用较多的研究课题之一。从多光谱卫星图像中识别不同的陆地类别是很重要的,因为原始图像包含噪声并且清晰度较低。该工作分为预处理、特征提取和分类三个阶段。在预处理中使用非局部均值滤波器去除图像中的噪声。比较了Gabor小波和GLCM(灰度共生矩阵)技术在特征提取上的优缺点,其中PCA在降维方面效果更好。本文提出的稀疏分类器对给定的多光谱卫星图像进行了有效的分类。它识别图像中同一组纹理的散射特征,与其他技术相比具有更好的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Land cover image classification using adaptive sparse fusion classifier
The presence of large number of spectral bands in the remote sensing images results in difficulty of identifying various land cover regions. Land cover classification is one of the recent researches which find more application in satellite image processing. It is important to recognize different land classes from a multispectral satellite image as the raw image contains noises and less clarity. The work was done in three stages such as preprocessing, feature extraction and classification. Noise present in the images are removed using a non-local means filter in preprocessing. Gabor wavelet and GLCM (gray level co-occurrence matrix) techniques were compared for feature extraction where PCA uses better in dimension reduction. The proposed sparse classifier efficiently classifies the given multispectral satellite image. It identifies the scattering features of same group of textures in the image, produces better accuracy compared to other techniques.
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