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Application of particle swarm optimization and snake model hybrid on medical imaging

机译:粒子群优化与蛇形混合模型在医学成像中的应用

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Active contour model has been widely used in image processing applications such as boundary delineation, image segmentation, stereo matching, shape recognition and object tracking. In this paper a novel particle swarm optimization scheme has been introduced to evolve snake over time in a way to reduce time complexity while improving quality of results. Traditional active contour models converge slowly and are prone to local minima due to their complex nature. Various evolutionary techniques including genetic algorithms, particle swarm optimization and predator prey optimization have been successfully employed to tackle this problem. Most of these methods are general problem solvers that, more or less, formulate the snake model equations as a minimization problem and try to optimize it. In contrary, our proposed approach integrates concepts from active contour model into particle swarm optimization so that each particle will represent a snaxel of the active contour. Canonical velocity update equation in particle swarm algorithm is modified to embrace the snake kinematics. This new model makes it possible to have advantages of swarm based searching strategies and active contour principles all together. Aptness of the proposed approach has been examined through several experiments on synthetic and real world images of CT and MRI images of brain and the results demonstrate its promising performance particularly in handling boundary concavities and snake initialization problems.
机译:有效轮廓模型已广泛用于图像处理应用,例如边界描绘,图像分割,立体声匹配,形状识别和对象跟踪。在本文中,已经引入了一种新的粒子群优化方案,以在提高结果质量的同时降低时间复杂性的方式随着时间的推移演变蛇。传统的活性轮廓模型慢慢收敛,并且由于其复杂的性质而易于局部最小值。已经成功地使用了各种进化技术,包括遗传算法,粒子群优化和捕食者猎物优化来解决这个问题。这些方法中的大多数是一般问题求解器,或多或少地将蛇形模型方程式制定为最小化问题,并尝试优化它。相反,我们所提出的方法将概念与主动轮廓模型集成到粒子群优化中,使得每个粒子将表示有源轮廓的阵桑。粒子群算法中的规范速度更新方程被修改为接受蛇运动学。这种新模型使得基于群的搜索策略和主动轮廓原则的优势可以各自在一起。通过若干关于CT和MRI图像的综合性和现实世界形象的综合和现实世界图像的实验来检查所提出的方法,结果表明了其有希望的性能,特别是在处理边界凹陷和蛇初始化问题方面。

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