Regional image similarity criteria based on the Kozachenko-Leonenko entropy estimator

Juan D. García-Arteaga, J. Kybic
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引用次数: 8

Abstract

Mutual information is one of the most widespread similarity criteria for multi-modal image registration but is limited to low dimensional feature spaces when calculated using histogram and kernel based entropy estimators. In the present article we propose the use of the Kozachenko-Leonenko entropy estimator (KLE) to calculate higher order regional mutual information using local features. The use of local information overcomes the two most prominent problems of nearest neighbor based entropy estimation in image registration: the presence of strong interpolation artifacts and noise. The performance of the proposed criterion is compared to standard MI on data with a known ground truth using a protocol for the evaluation of image registration similarity measures. Finally, we show how the use of the KLE with local features improves the robustness and accuracy of the registration of color colposcopy images.
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基于Kozachenko-Leonenko熵估计的区域图像相似准则
互信息是多模态图像配准中最广泛使用的相似性标准之一,但在使用直方图和基于核的熵估计器计算时,它仅限于低维特征空间。在本文中,我们提出使用Kozachenko-Leonenko熵估计器(KLE)来计算利用局部特征的高阶区域互信息。局部信息的使用克服了基于最近邻的熵估计在图像配准中存在的两个最突出的问题:强插值伪影和噪声。使用评估图像配准相似度量的协议,将所提出标准的性能与具有已知基础真值的数据上的标准MI进行比较。最后,我们展示了如何使用局部特征的KLE提高了彩色阴道镜图像配准的鲁棒性和准确性。
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