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Efficient Algorithm for Nonconvex Minimization and Its Application to PM Regularization

机译:非凸最小化的高效算法及其在PM正则化中的应用

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摘要

In image processing, nonconvex regularization has the ability to smooth homogeneous regions and sharpen edges but leads to challenging computation. We propose some iterative schemes to minimize the energy function with nonconvex edge-preserving potential. The schemes are derived from the duality-based algorithm proposed by Bermúdez and Moreno and the fixed point iteration. The convergence is proved for the convex energy function with nonconvex potential and the linear convergence rate is given. Applying the proposed schemes to Perona and Malik''s nonconvex regularization, we present some efficient algorithms based on our schemes, and show the approximate convergence behavior for nonconvex energy function. Experimental results are presented, which show the efficiency of our algorithms, including better denoised performance of nonconvex regularization, faster convergence speed, higher calculation precision, lower calculation cost under the same number of iterations, and less implementation time under the same peak signal noise ratio level.
机译:在图像处理中,非凸正则化具有平滑均质区域和锐化边缘的能力,但会导致计算困难。我们提出了一些迭代方案,以最小化具有非凸边保留势的能量函数。该方案源自Bermúdez和Moreno提出的基于对偶性的算法以及定点迭代。证明了具有非凸势的凸能量函数的收敛性,并给出了线性收敛速度。将所提出的方案应用于Perona和Malik的非凸正则化,我们基于该方案提出了一些有效的算法,并给出了非凸能量函数的近似收敛行为。实验结果表明,该算法的有效性,包括更好的非凸正则化去噪性能,更快的收敛速度,更高的计算精度,在相同迭代次数下的计算成本更低,在相同峰值信号噪声比下的实现时间更少。水平。

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