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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Multi-level pixel-based texture classification through efficient prototype selection via normalized cut
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Multi-level pixel-based texture classification through efficient prototype selection via normalized cut

机译:通过归一化切割进行有效原型选择,从而实现基于像素的多级纹理分类

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摘要

This paper presents a new efficient technique for supervised pixel-based classification of textured images. A prototype selection algorithm that relies on the normalized cut criterion is utilized for automatically determining a subset of prototypes in order to characterize each texture class at the local level based on the outcome of a multichannel Gabor filter bank. Then, a simple minimum distance classifier fed with the previously determined prototypes is used to classify every image pixel into one of the given texture classes. Multi-sized evaluation windows following a top-down approach are used during classification in order to improve accuracy near frontiers of regions of different texture. Results with standard Brodatz, VisTex and MeasTex compositions and with complex real images are presented and discussed. The proposed technique is also compared with alternative texture classifiers.
机译:本文提出了一种新的有效技术,用于监督基于像素的纹理图像分类。依靠归一化剪切标准的原型选择算法用于自动确定原型的子集,以便基于多通道Gabor滤波器组的结果在局部级别表征每个纹理类别。然后,使用预先确定的原型提供的简单最小距离分类器,将每个图像像素分类为给定纹理类别之一。在分类期间使用遵循自顶向下方法的多尺寸评估窗口,以提高不同纹理区域的边界附近的准确性。介绍并讨论了使用标准Brodatz,VisTex和MeasTex成分以及复杂的真实图像的结果。还将所提出的技术与替代的纹理分类器进行比较。

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