Performance evaluation of some textural features for muscle tissue classification

P. Reuze, A. Bruno, E. Le Rumeur
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引用次数: 2

Abstract

Textural features are compared for the classification of MR muscle images. The objective is to determine which features optimize classification rate using small ROIs. Four classes of textural features are considered: the authors have studied fractal, cooccurrence, higher order statistics and mathematical morphology. The quantitative evaluation of the discrimination power of the features is based on the performance of the classification error rate with a K-nearest neighbor classifier. The results shows that the mathematical morphology features provide the best classification rate on the authors' clinical MR images of healthy and sick muscles.<>
一些纹理特征在肌肉组织分类中的性能评价
通过比较纹理特征对MR肌肉图像进行分类。目标是确定哪些特征使用较小的roi优化分类率。本文研究了四类纹理特征:分形、共现、高阶统计和数学形态学。特征识别能力的定量评价是基于k近邻分类器的分类错误率的表现。结果表明,数学形态学特征对作者的健康和病态肌肉的临床MR图像提供了最佳的分类率。
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