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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >STATISTICAL GEOMETRICAL FEATURES FOR TEXTURE CLASSIFICATION
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STATISTICAL GEOMETRICAL FEATURES FOR TEXTURE CLASSIFICATION

机译:纹理分类的统计几何特征

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摘要

This paper proposes a novel set of 16 features based on the statistics of geometrical attributes of connected regions in a sequence of binary images obtained from a texture image. Systematic comparison using all the Brodatz textures shows that the new set achieves a higher correct classification rate than the well-known Statistical Gray Level Dependence Matrix method, the recently proposed Statistical Feature Matrix, and Liu's features. The deterioration in performance with the increase in the number of textures in the set is less with the new SGF features than with the other methods, indicating that SGF is capable of handling a larger texture population, The new method's performance under additive noise is also shown to be the best of the four. [References: 16]
机译:本文基于从纹理图像获得的二值图像序列中连接区域的几何属性统计,提出了一套新颖的16个特征集。使用所有Brodatz纹理进行的系统比较表明,与众所周知的统计灰度依赖矩阵方法,最近提出的统计特征矩阵和Liu的特征相比,新集合具有更高的正确分类率。新的SGF功能比其他方法减少了随着纹理数量增加而导致的性能下降,这表明SGF能够处理更大的纹理数量,还显示了新方法在加性噪声下的性能。成为四者中的佼佼者。 [参考:16]

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