Texture Based Classification and Segmentation of Tissues Using DT-CWT Feature Extraction Methods

D. Aydogan, M. Hannula, T. Arola, P. Dastidar, J. Hyttinen
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引用次数: 12

Abstract

In this study, four different dual-tree complex wavelet (DT-CWT) based texture feature extraction methods are developed and compared to segment and classify tissues. Methods that are proposed in this study are based on local energy calculations of sub-bands. Two of the methods use rotation variant texture features and the other two use rotation invariant features. The methods are tested on two texture compositions from the Brodatz texture database and two actual magnetic resonance (MR) images. Results show that there is not a significant difference between using rotation variant or invariant features. On the other hand, for the same Brodatz textures, all DT-CWT based feature extraction methods are competitive with other filtering approaches.
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基于纹理的组织分类与分割的DT-CWT特征提取方法
本研究开发了四种基于双树复小波(DT-CWT)的纹理特征提取方法,并对其进行了分割和分类。本研究提出的方法是基于子波段的局部能量计算。其中两种方法使用旋转可变纹理特征,另外两种方法使用旋转不变特征。在Brodatz纹理数据库中的两个纹理组合和两个实际的磁共振图像上对这些方法进行了测试。结果表明,旋转变特征和旋转不变特征的使用没有显著差异。另一方面,对于相同的Brodatz纹理,所有基于DT-CWT的特征提取方法都与其他滤波方法竞争。
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