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首页> 外文期刊>International journal of imaging systems and technology >Cross-cumulative residual entropy-based medical image registration via hybrid differential search algorithm
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Cross-cumulative residual entropy-based medical image registration via hybrid differential search algorithm

机译:混合差分搜索算法基于交叉累积残差熵的医学图像配准

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摘要

Image registration is the process of overlaying images of the same scene taken at different times by different sensors from different viewpoints. The cross-cumulative residual entropy (CCRE)-based medical image registration could achieve a high precision and a strong robustness performance. However, the optimization problem formulated by CCRE consists of some local extrema, especially for noise images. In order to address these difficulties, this article proposes a new optimization algorithm named hybrid differential search algorithm (HDSA) to optimize CCRE. As HDSA consists of simple control parameters, it is independent of the initial searching point. In addition, HDSA ameliorated the search method and the iterative conditions. As a result, the optimization process is more stable and efficient. Image registration experiments of HDSA are performed and compared with the conventional differential search algorithm (DSA) and adaptive differential evolution with optional external archive (JADE). The results show that HDSA does not only overcome the difficulties of sticking in the local extrema but also enhances the precision of registration. It is effective, robust, and fast for both the single-mode rigid medical image registration and the multispectral-mode rigid medical image registration.
机译:图像配准是叠加不同传感器从不同视点在不同时间拍摄的同一场景的图像的过程。基于交叉累积残差熵(CCRE)的医学图像配准可以实现高精度和强大的鲁棒性。但是,CCRE提出的优化问题包括一些局部极值,特别是对于噪声图像。为了解决这些困难,本文提出了一种新的优化算法,称为混合差分搜索算法(HDSA),以优化CCRE。由于HDSA由简单的控制参数组成,因此它与初始搜索点无关。此外,HDSA改善了搜索方法和迭代条件。结果,优化过程更加稳定和高效。进行了HDSA的图像配准实验,并将其与常规差分搜索算法(DSA)和带有可选外部归档的自适应差分进化(JADE)进行了比较。结果表明,HDSA不仅克服了粘贴在局部极值上的困难,而且提高了套准的精度。对于单模刚性医学图像配准和多谱模刚性医学图像配准,它都是有效,强大和快速的。

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