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Robust Classification of MR Brain Images Based on Multiscale Geometric Analysis

机译:基于多尺度几何分析的MR脑图像鲁棒分类

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摘要

The widely used feature representation scheme for magnetic resonance (MR) image classification based on low-frequency subband (LFS) coefficients of wavelet transform (WT) is ineffective in presence of common MR imaging (MRI) artifacts (small rotation, low dynamic range etc.). The directional information present in the high-frequency subbands (HFSs) can be used to improve the performance. Moreover, little attention has been paid to the newly developed multiscale geometric analysis (MGA) tools (curvelet, contourlet, and ripplet etc.) in classifying brain MR images. In this paper, we compare various mul-tiresolution analysis (MRA)/MGA transforms, such as traditional WT, curvelet, contourlet and ripplet, for brain MR image classification. Both the LFS and the high-frequency subbands (HFSs) are used to construct image representative feature vector invariant to common MRI artifacts. The investigations include the effect of different decomposition levels and filters on classification performance. By comparing results, we give the best candidate for classifying brain MR images in presence of common artifacts.
机译:在存在常见的MR成像(MRI)伪像(小旋转,低动态范围等)的情况下,基于小波变换(WT)的低频子带(LFS)系数的磁共振(MR)图像分类的广泛使用的特征表示方案无效)。高频子带(HFS)中存在的方向信息可用于提高性能。此外,在对脑MR图像进行分类时,很少关注新开发的多尺度几何分析(MGA)工具(曲线,轮廓波和波纹等)。在本文中,我们比较了用于脑部MR图像分类的各种多分辨率分析(MRA)/ MGA转换,例如传统的WT,curvelet,contourlet和ripplet。 LFS和高频子带(HFS)均用于构建不代表常见MRI伪影的图像代表特征向量。调查包括不同分解级别和过滤器对分类性能的影响。通过比较结果,我们给出了在存在常见伪影的情况下对脑部MR图像进行分类的最佳人选。

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