结合几何活动轮廓的自适应水平集方法

Heng Wang, Zihan Zhuo, Jianan Wu, Jingtian Tang
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引用次数: 1

摘要

水平集方法在轮廓识别和图像分割中得到了广泛的应用。传统的水平集方法需要定期初始化水平集函数,且高度依赖于初始轮廓位置,存在许多问题。针对这些问题,本文提出了一种新的水平集自适应绘制几何活动轮廓的方法。在曲线演化过程中引入变权系数,使算法不受轮廓初始位置的影响,使演化曲线能够快速收敛到目标边界。此外,该方法还能识别目标的内部边界和凹陷轮廓,便于在复杂图像中应用。最后,通过计算机仿真,验证了该算法在不同条件下的轮廓识别精度、效率和可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-adaptive level set methods combined with geometric active contour
Level set methods have been extensively used in contour recognition and image segmentation. The traditional level set methods require to initialize the level set function regularly and are strongly dependent on initial contour position thus there are many problems about the methods. Considering those problems, this article proposed a new level set method to draw geometric active contour self-adaptively. Variable weight coefficient is introduced during the curve evolutionary process thus algorithm is independent of contour initial position and evolutionary curves are able to converge to the target boundaries efficiently. What's more, it can recognize the target inner boundaries and the depressed contours thus it is easy to be applied in complicated images. Finally, by computer simulation, the algorithm for recognizing contours under different conditions is proved to be accurate, efficient and reliable.
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