MRI Monomodal Feature-Based Registration Based on the Efficiency of Multiresolution Representation and Mutual Information

Nemir Al-Azzawi, W. A. K. W. Abdullah
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引用次数: 9

Abstract

Image registration methods based on mutual information criteria have been widely used in monomodal medi- cal image registration and have shown promising results. Feature-based registration is an efficient technique for clinical use, because it can significantly reduce computational costs. In general, the majority of registration methods consist of the fol- lowing four steps: feature extraction, feature matching, transformation of the models and, finally, resampling the image. It was noted that the accuracy of the registration process depends on matching a feature and control points (CP) detection. Therefore in this paper has been to rely on this feature for magnetic resonance image (MRI) monomodal registration. We have proposed to extract the salient edges and extracted a CP of medical images by using efficiency of multiresolution rep- resentation of data nonsubsampled contourlet transform (NSCT). The MR images were first decomposed using the NSCT, and then Edge and CP were extracted from bandpass directional subband of NSCT coefficients and some proposed rules. After edge and CP extraction, mutual information (MI) was adopted for the registration of feature points and translation parameters are calculated by using particle swarm optimization (PSO). We implement experiments to evaluate the per- formance of the NTSC and MI similarity measures for 2-D monomodal registration. The experimental results showed that the proposed method produces totally accurate performance for MRI monomodal registration.
基于多分辨率表示效率和互信息的MRI单模特征配准
基于互信息准则的图像配准方法在单模医学图像配准中得到了广泛的应用,并取得了良好的效果。基于特征的配准是一种有效的临床应用技术,因为它可以显著减少计算成本。一般来说,大多数配准方法包括以下四个步骤:特征提取、特征匹配、模型变换,最后是图像重采样。值得注意的是,配准过程的准确性取决于匹配特征和控制点(CP)检测。因此本文一直是依靠这一特征对磁共振图像(MRI)进行单峰配准。提出了利用数据非下采样contourlet变换(NSCT)的多分辨率表示效率提取医学图像的显著边缘和CP。首先使用NSCT对MR图像进行分解,然后从NSCT系数的带通方向子带和提出的规则中提取边缘和CP。在提取边缘和CP后,采用互信息(MI)进行特征点配准,并利用粒子群优化(PSO)计算平移参数。我们实施实验来评估NTSC和MI相似度度量在二维单模配准中的性能。实验结果表明,该方法对MRI单峰配准具有完全准确的性能。
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