光谱聚类的快速收敛

Marco Aiello, F. Andreozzi, E. Catanzariti, F. Isgrò, M. Santoro
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引用次数: 2

摘要

在过去的几年里,计算机视觉研究人员对所谓的光谱聚类表现出了极大的兴趣,在这种聚类中,数据是通过分析拉普拉斯矩阵的前几个特征向量(即与第一个特征值相关的特征向量)来聚类的,这些特征向量直接从数据集中导出。注意,为了数据聚类的目的,不需要准确地确定特征向量。当对图像进行聚类(分割)时,该矩阵的维数很大(例如,100乘以100的图像会得到10000乘以10000的矩阵),而确定特征向量所必需的标准对角化算法,如Lanczos,确实需要一定数量的迭代:通常是n乘以n个矩阵的根式步长,并且可能需要一些迭代才能接近解。在这里,我们报告了使用最近的对角化算法(命名为APL)的第一次尝试,该算法借用了核物理学文献,除其他性质外,其主要优点是在少量迭代步骤中获得特征向量,即使不准确,也足以执行合理的分割。在这个意义上,我们谈论谱聚类的快速收敛。获得的实验结果支持了这一说法,并为进一步挖掘本研究未包括的算法的进一步细节开辟了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast convergence for spectral clustering
Over the last years computer vision researchers have shown great interest for the so called spectral clustering, where the data are clustered analysing the first few eigenvectors (i.e., the ones relative to the first eigenvalues) of a the Laplacian matrix, derived directly from the data-set. Note that for the purpose of data clustering the eigenvectors need not to be determined accurately. When clustering (segmenting) images the dimension of this matrix is large (e.g., an image as small as 100 times 100 results in a 10000 times 10000 matrix), and standard diagonalisation algorithms such Lanczos, necessary for determining the eigenvectors, do require a certain number of iterations: typically in the order of radicn step for n times n matrices, and may take some iterations for getting close to the solutions. Here we report the first attempt using a recent diagonalisation algorithm (named APL) borrowed from the nuclear physics literature, that, among other properties, has the main advantage of obtaining in a small number of iteration steps eigenvectors, that even if not accurate, are good enough for performing a reasonable segmentation. In this sense we talk of fast convergence of spectral clustering. The experimental results obtained support this claim, and open the way to further work exploiting further detail of the algorithm not included in this study.
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