Defuzzification by Feature Distance Minimization Based on DC Programming

Joakim Lindblad, T. Lukić, Natasa Sladoje
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引用次数: 1

Abstract

We introduce the use of DC programming, in combination with convex-concave regularization, as a deterministic approach for solving the optimization problem imposed by defuzzification by feature distance minimization. We provide a DC based algorithm for finding a solution to the defuzzification problem by expressing the objective function as a difference of two convex functions and iteratively solving a family of DC programs. We compare the performance with the previously recommended method, simulated annealing, on a number of test images. Encouraging results, together with several advantages of the DC based method, approve use of this approach, and motivate its further exploration.
基于DC规划的特征距离最小化去模糊化
我们介绍了DC规划的使用,结合凹凸正则化,作为一种确定性的方法来解决由特征距离最小化的去模糊化所带来的优化问题。通过将目标函数表示为两个凸函数的差,并迭代求解一组DC程序,提出了一种基于DC的解模糊化问题的算法。我们在许多测试图像上比较了该方法与先前推荐的模拟退火方法的性能。令人鼓舞的结果,以及基于数据中心的方法的几个优点,批准了这种方法的使用,并激励了它的进一步探索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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