PET/MRI图像融合的互信息度量评价

S. Gupta, K. P. Ramesh, E. Blasch
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引用次数: 35

摘要

图像融合的发展为图像覆盖、图像锐化和通过像素、特征或区域/形状组合进行图像提示等新方法铺平了道路。这些新技术的适用性在图像内容、上下文信息和图像融合增益的广义度量上有所不同。图像融合增益可以相对于信息增益或熵减少来评估。在本文中,我们感兴趣的是探索融合图像的性能度量评价。通过研究感兴趣图像的互信息含量,给出了融合图像的度量评价方法。注册的MR/PET图像用于演示。提出互信息作为评价图像融合性能的信息度量。所提出的度量表示了如何利用从融合图像中获得的信息来评估不同图像融合算法的信息。结果表明,该措施是有意义的和明确的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mutual Information Metric Evaluation for PET/MRI Image Fusion
Image fusion developments has paved way for new approaches like image overlay, image sharpening, and image cueing through pixel, feature, or region/shape combinations. The applicability of these new techniques differs on the image content, contextual information, and generalized metrics of image fusion gain. An image fusion gain can be assessed relative to information gain or entropy reduction. In this paper, we are interested in exploring the performance metric evaluation of the fused images. The metric evaluation method for the fused image is done by studying the mutual information content of the images of interest. The registered MR/PET images are used for demonstration. Mutual Information is proposed as an information measure for evaluating image fusion performance. The proposed measure represents how information obtained from the fused image can be used to assess the information of different image fusion algorithms. The results show that the measure is meaningful and explicit.
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