基于能量最小化的流形聚类

Qiyong Guo, Hongyu Li, Wenbin Chen, I-Fan Shen, Jussi Parkkinen
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引用次数: 4

摘要

流形聚类旨在将一组输入数据划分为几个簇,每个簇包含来自单独的、简单的低维流形的数据点。本文提出了一种解决这一问题的新方法。该算法首先随机选择输入数据的邻近阶数,并定义一个能量函数,该能量函数由底层流形的几何特征描述。通过使用禁忌搜索方法将能量最小化,可以很容易地找到近似最优序列,并进一步通过检测沿最优序列的关键点、流形之间的边界来分离不同的流形。将该方法应用于合成数据和真实图像数据,实验结果表明该方法在流形聚类中是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Manifold clustering via energy minimization
Manifold clustering aims to partition a set of input data into several clusters each of which contains data points from a separate, simple low-dimensional manifold. This paper presents a novel solution to this problem. The proposed algorithm begins by randomly selecting some neighboring orders of the input data and defining an energy function that is described by geometric features of underlying manifolds. By minimizing such energy using the tabu search method, an approximately optimal sequence could be found with ease, and further different manifolds are separated by detecting some crucial points, boundaries between manifolds, along the optimal sequence. We have applied the proposed method to both synthetic data and real image data and experimental results show that the method is feasible and promising in manifold clustering.
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