基于卷积神经网络相似度度量的医学图像配准

Li Dong, Yongzheng Lin, Yishen Pang
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引用次数: 0

摘要

配准用于建立一组图像之间的对应关系,对于医学应用具有重要意义。在图像处理过程中,相似性度量是必不可少的一个环节。要注意,相似性度量的有效性是评价一组图像切片之间的差异,这对配准的性能有很大的影响。以前的大多数算法都可以用基于模型的方法进行分类,这种方法依赖于它们对图像的适用性。同时,这些相似度度量不能满足医学图像配准对效率和准确性的要求。为了解决上述问题,本文提出了一种基于卷积神经网络的相似性度量方法。用两个公开的DIARETDB1和RIRE对所提出的相似性度量进行了实验评价。数字和视觉结果都支持我们的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Medical Image Registration via Similarity Measure based on Convolutional Neural Network
Registration, which is exploited to establish the corresponding relationship between a group of images, is of importance for medical applications. Within the image processing process, a similarity measure is an essential stage. To note that the effectiveness of similarity measure is to evaluate the discrepancy between a set of image slices, which greatly affects the performance of registration. Most of the previous algorithms can be categorized in model-based methods, which rely on their suitability to the images. Meanwhile, these similarity measures can not satisfy the requirements of efficiency and accuracy in medical image registration. To address the above-mentioned problems, one novel similarity measure is presented with a convolutional neural network. Experiments were conducted to evaluate the proposed similarity measure with two public DIARETDB1 and RIRE. The numerical and visual outcome both support our work.
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