Active contour model for medical sequence image segmentation based on spatial similarity

Chencheng Huang, Denglan Lei, Zhaofei Li
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引用次数: 2

Abstract

Background and Objectives: Image segmentation is the basic problem in computer vision and pattern recognition. This study mainly focuses on the segmentation of medical sequence images. Materials and Methods: In this article, we considered the spatial similarity of the medical sequence image in active contour model (ACM) for segmentation. First, by utilizing the similarity of object contour between adjacent slices of medical images, and then using the segment result of the former slice as the initial contour of the next image to segmentation. The proposed model can automatically obtain a better initial contour location and reduce the computing cost for segment processing. Second, to improve the accuracy of image segmentation, we considered the similarity of the object contour between adjacent slices, and introduce a punishment term in localized ACM. Results: We compared our model and other methods for segmenting medical brain magnetic resonance slices, and the experimental results on synthetic medical sequence images validate the effectiveness of the proposed method. Conclusions: By utilizing the similarity of object contour between adjacent slices of medical images, and using the segment result of former slice as the initial contour of the next image to segment, the proposed model can obtain better initial contour location for segmentation sequence images and reduce the computing cost for whole medical sequence image segmentation process.
基于空间相似性的医学序列图像分割活动轮廓模型
背景与目的:图像分割是计算机视觉和模式识别中的基本问题。本研究主要针对医学序列图像的分割进行研究。材料与方法:本文在活动轮廓模型(ACM)中考虑医学序列图像的空间相似性进行分割。首先利用医学图像相邻切片之间物体轮廓的相似性,然后将前一切片的分割结果作为下一图像的初始轮廓进行分割。该模型能自动获得较好的初始轮廓位置,降低了分割处理的计算成本。其次,为了提高图像分割的准确性,我们考虑了相邻切片之间目标轮廓的相似性,并在局部化ACM中引入了惩罚项。结果:将该模型与其他医学脑磁共振切片分割方法进行了比较,在合成医学序列图像上的实验结果验证了该方法的有效性。结论:该模型利用医学图像相邻切片之间物体轮廓的相似性,将前切片的分割结果作为下一图像的初始轮廓进行分割,可以获得更好的分割序列图像初始轮廓定位,降低整个医学序列图像分割过程的计算成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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