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首页> 外文期刊>Journal of algorithms & computational technology >Fast Converging Implementation of a Region-based Active Contour Model
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Fast Converging Implementation of a Region-based Active Contour Model

机译:基于区域的主动轮廓模型的快速收敛实现

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PDE-based image segmentation based on the active contour model attracts many researchers due to its high precision of edge detection and the continuity of boundaries. Its basic idea is to define an energy functional on a dynamic curve which achieves its minimum when the curve conforms to the boundary of the objects. Thus, the image segmentation problem is in essence an optimization problem. The most widely used optimization method is the gradient descent method in PDE-based image segmentation. However, the convergence of the gradient descent method is very poor. In this paper, a quasi-Newton method is extended to the generalized quasi-Newton method, and then the generalized Newton method and the generalized quasi-Newton method are used to solve a simple region-based model and compared with the gradient decent method. Experimental results show that the generalized quasi-Newton method has accurate segmentation results in the least possible number of iteration. Moreover it is able to segment noisy images correctly.
机译:基于主动轮廓模型的基于PDE的图像分割由于其边缘检测的高精度和边界的连续性而吸引了许多研究人员。它的基本思想是在动态曲线上定义能量函数,当该曲线与对象的边界一致时,该函数将达到最小值。因此,图像分割问题实质上是优化问题。最广泛使用的优化方法是基于PDE的图像分割中的梯度下降方法。但是,梯度下降法的收敛性很差。本文将拟牛顿法扩展到广义拟牛顿法,然后用广义牛顿法和广义拟牛顿法求解简单的基于区域的模型,并与梯度体面法进行比较。实验结果表明,广义拟牛顿法具有精确的分割结果,且迭代次数最少。此外,它能够正确分割噪点图像。

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