Generalized Multi-manifold Graph Ensemble Embedding for Multi-View Dimensionality Reduction

Sumet mehta
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引用次数: 1

Abstract

In this paper, we propose a new dimension reduction (DR) algorithm called ensemble graph-based locality preserving projections (EGLPP); to overcome the neighborhood size k sensitivity in locally preserving projections (LPP). EGLPP constructs a homogeneous ensemble of adjacency graphs by varying neighborhood size k and finally uses the integrated embedded graph to optimize the low-dimensional projections. Furthermore, to appropriately handle the intrinsic geometrical structure of the multi-view data and overcome the dimensionality curse, we propose a generalized multi-manifold graph ensemble embedding framework (MLGEE). MLGEE aims to utilize multi-manifold graphs for the adjacency estimation with automatically weight each manifold to derive the integrated heterogeneous graph. Experimental results on various computer vision databases verify the effectiveness of proposed EGLPP and MLGEE over existing comparative DR methods.
面向多视图降维的广义多流形图集成嵌入
本文提出了一种新的降维算法——基于集成图的局域保持投影(EGLPP);克服局部保持投影(LPP)中邻域大小k的敏感性。EGLPP通过改变邻域大小k来构造邻接图的齐次集合,最后利用集成的嵌入图对低维投影进行优化。此外,为了适当处理多视图数据的固有几何结构,克服维数诅咒,提出了广义多流形图集成嵌入框架(MLGEE)。MLGEE的目标是利用多流形图进行邻接估计,并自动对每个流形进行加权,从而得到综合的异构图。在各种计算机视觉数据库上的实验结果验证了所提出的EGLPP和MLGEE比现有的比较DR方法的有效性。
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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