非相交流形的无监督分割

Subhadip Boral, Sumedha Dhar, Ashish Ghosh
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引用次数: 1

摘要

流形学习一直是一个重要的研究领域,从文献中可以看出,大多数现实数据集中的模式可以嵌入到低维空间中,同时保持高维空间的原始结构。这项工作集中在流形学习的主要研究领域之一,即流形的分离,其中多个非相交流形存在。该方法利用拉普拉斯图矩阵检测数据集中流形的数量,并利用聚类方法对流形进行分离。最后,局部线性嵌入被用于每个单独流形的降维,使流形保持分离,并保持原始的全局结构。该方法在基准合成数据集SCurve, SwissRoll, Helix和现实数据集COIL-20,光学数字识别,att_faces,扩展耶鲁人脸数据库b上取得了更好的结果。目前的方法无法检测数据集中流形的数量,但该方法不仅超过了它们的性能,而且在低维空间中携带了可分离结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Segmentation of Non-Intersecting Manifolds
Manifold learning has been an important research area as from literature it is evident that patterns in most real-life data sets can be embedded in low-dimensional space while maintaining the original structure of high-dimensional space. This work concentrates on one of the major research areas of manifold learning, which is the segregation of manifolds where more than one non-intersecting manifolds are present. The proposed method presents a solution to the problem by detecting the number of manifolds in a dataset using the Laplacian graph matrix and segregate the manifolds using agglomerative clustering. Eventually, locally linear embedding has been used for dimensionality reduction of every individual manifold in such a way that manifolds remain segregated and also holds the original global structure. The proposed method achieves finer results when applied on benchmark synthetic data sets SCurve, SwissRoll, Helix and real-life datasets COIL-20, optical digit recognition, att_faces, extended Yale Face Database B. While the state of the art methods fails to detect the number of manifolds in a dataset, the proposed method not only eclipses the performance of them but also carry the separable structure in the lower dimensional space.
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