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A Fast External Force Model for Snake-Based Image Segmentation

机译:基于蛇图像分割的快速外力模型

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Snakes have been extensively used for object segmentation and tracking in computer vision and image processing applications.One of these drawbacks is that they converge slowly,since inverse matrix is computed at each iteration.We have introduced a new external force model,called meanshift flow field (MSFF).This external force model is computed by a novel and fast mean-shift mask.This type of snake has the feature that it can enhance the convergence rates,and at the same time,maintain the properties of the traditional and GVF snakes.A conventional parametric snake model relies on some functions of the object contour gradient;in contrast the proposed method bases on MSFF which offers an automatic and definite termination criterion.To demonstrate the effectiveness of our algorithm,we present the processing results from synthetic and real images.The experimental results show that by incorporating mean-shift information into the snake framework,the new snake model provides excellent convergence speed and stability.
机译:蛇已广泛用于计算机视觉和图像处理应用中的对象分割和跟踪。这些缺点之一是它们收敛缓慢,因为每次迭代都需要计算逆矩阵。我们引入了一种新的外力模型,称为均值漂移流场(MSFF)。此外力模型是通过新颖且快速的均值移位蒙版计算的。这种类型的蛇具有可以提高收敛速度的特征,同时保留了传统蛇和GVF蛇的特性。传统的参量蛇模型依赖于对象轮廓梯度的某些功能;相反,所提出的方法基于MSFF,该方法提供了自动确定的终止标准。为证明我们算法的有效性,我们提出了综合和真实的处理结果实验结果表明,通过将均值漂移信息纳入蛇形框架中,新的蛇形模型提供了出色的收敛性速度和稳定性。

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