近最优正则化参数在计算机视觉中的应用

Changjiang Yang, R. Duraiswami, L. Davis
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引用次数: 2

摘要

计算机视觉需要解决许多病态问题,如光流、运动的结构、阴影的形状、表面重建、图像恢复和边缘检测。正则化是一种解决病态问题的流行方法,其中通过最小化两个加权项的和来寻求解决方案,一个衡量由病态模型引起的误差,另一个表示解决方案与基于先验知识(平滑性或其他先验信息)选择的某类解决方案之间的距离。正则化中的一个重要问题是选择最优权值(或正则化参数)。现有的正则化参数选择方法要么需要数据中噪声的先验信息,要么是启发式图方法。我们通过近似最小化真解与正则化解族之间的距离,应用了一种选择近最优正则化参数的方法。我们通过边缘检测和图像恢复两个例子证明了该方法在正则化方面的有效性。
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Near-optimal regularization parameters for applications in computer vision
Computer vision requires the solution of many ill-posed problems such as optical flow, structure from motion, shape from shading, surface reconstruction, image restoration and edge detection. Regularization is a popular method to solve ill-posed problems, in which the solution is sought by minimization of a sum of two weighted terms, one measuring the error arising from the ill-posed model, the other indicating the distance between the solution and some class of solutions chosen on the basis of prior knowledge (smoothness, or other prior information). One of important issues in regularization is choosing optimal weight (or regularization parameter). Existing methods for choosing regularization parameters either require the prior information on noise in the data, or are heuristic graphical methods. We apply a method for choosing near-optimal regularization parameters by approximately minimizing the distance between the true solution and the family of regularized solutions. We demonstrate the effectiveness of this approach for the regularization on two examples: edge detection and image restoration.
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