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An Automatic Medical Image Registration Approach Based on Common Sub-regions of Interest

机译:一种基于常见兴趣子区域的自动医学图像登记方法

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摘要

Accurate and efficient image registration, based on interested common sub-regions is still a challenging task in medical image analysis. This paper presents an automatic features based approach for the rigid and deformable registration of medical images using interested common sub-regions. In the proposed approach, interested common sub-regions in two images (target image and source image) are automatically detected and locally registered. The final global registration is performed, using the transformation parameters obtained from the local registration. Registration using interested common sub-regions is always required in image guided surgery (IGS) and other medical procedures because it considers only the desired objects in medical images instead of the whole image contents. The proposed interested common sub-regions based registration is compared with the two states-of-the-art methods on MR images of human brain. In the experiments of rigid and deformable registrations, we show that our approach outperforms in terms of both the accuracy and time efficiency. The results reveal that interested common sub-region based registration can achieve good performance, regarding both the accuracy as well as the the time efficiency in monomodal brain image registration. In addition, the proposed approach also indicates the potential for multimodal images of different human organs.
机译:准确有效的图像配准,基于感兴趣的常见子区域仍然是医学图像分析中的具有挑战性的任务。本文介绍了一种基于自动特征的方法,用于使用感兴趣的常见子区域的医学图像刚性和可变形登记。在所提出的方法中,自动检测到两个图像(目标图像和源图像)中的常见子区域并在本地注册。使用从本地注册中获取的转换参数进行最终的全局注册。使用感兴趣的常见子区域的注册始终需要在图像引导手术(IGS)和其他医疗程序中所需的,因为它仅考虑医学图像中的所需对象而不是整个图像内容。基于拟议的普通子区域的注册与人类大脑MR图像上的两种最新方法进行了比较。在刚性和可变形的注册的实验中,我们表明我们的方法在准确性和时间效率方面都越优越。结果表明,有兴趣的常见的亚区域的注册可以达到良好的性能,关于单兆级脑图像登记的准确性以及时间效率。此外,所提出的方法还表明了不同人体器官的多模式图像的潜力。

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