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Object Segmentation by Comparison of Active Contour Snake and Level Set in Biomedical Applications

机译:通过比较生物医学应用中的活动轮廓蛇和级别的对象分割

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Automatic foreground object segmentation is a fascinating, a demanding research area, and an exigent problem in biomedical applications. Existing works cannot segment concave objects and completely dependent on initial curve that is initialized manually by the users, and must be closer to the object. Due to these limitations, most of them were considered as semi-automatic approaches. In this paper, we incorporated active contours (level-set) based on Bhattacharya distance to the Chan and Vese energy functional such that are not only minimized the differences within each region but also maximized the distance between the two regions as well. Compared with active contour snake, the proposed model gave more accurate results that segment the foreground objects automatically.
机译:自动前景对象分割是一个令人欣赏的,苛刻的研究区,以及生物医学应用中的艰难问题。现有工作无法段段凹对象,并完全依赖于用户手动初始化的初始曲线,并且必须更靠近对象。由于这些限制,大多数被认为是半自动方法。在本文中,我们基于Bhattacharya距离的活动轮廓(LETE-SET)掺入陈和VESE能量功能,使得不仅最小化了每个区域内的差异,而且还最大化了两个区域之间的距离。与活动轮廓蛇相比,所提出的模型将自动段段段的更准确的结果。

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