Building a brain atlas based on gabor texture features

Arkane Khaminkure, Paramate Horkaew, J. Panyavaraporn
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引用次数: 2

Abstract

Brain atlas has become a primary means of computer aided neurological diagnosis. It relies on registering intra/inter-subject brain scans on a common frame of reference, on which statistical variability model is built. This diffeomorphic map of anatomically plausible correspondence could in turn be used for monitoring and identifying progress and manifestation of the disease, respectively. It is accepted that dense image registration is very accurate but computationally expensive. This paper thus presents a feature based image registration by using orientation invariant Gabor responses of texture. The reported results herein demonstrate that it is both anatomically accurate and robust.
基于gabor纹理特征的脑图谱构建
脑图谱已成为计算机辅助神经学诊断的主要手段。它依赖于在一个共同的参考框架上记录主体内/主体间的大脑扫描,并在此基础上建立统计变异性模型。这种解剖上似是而非的对应的差胚图可以分别用于监测和识别疾病的进展和表现。人们普遍认为密集图像配准精度高,但计算量大。本文提出了一种基于纹理方向不变性Gabor响应的特征配准方法。本文报道的结果表明,它是解剖准确和稳健。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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