Subspace Clustering for Sequential Data

Stephen Tierney, Junbin Gao, Yi Guo
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引用次数: 102

Abstract

We propose Ordered Subspace Clustering (OSC) to segment data drawn from a sequentially ordered union of subspaces. Current subspace clustering techniques learn the relationships within a set of data and then use a separate clustering algorithm such as NCut for final segmentation. In contrast our technique, under certain conditions, is capable of segmenting clusters intrinsically without providing the number of clusters as a parameter. Similar to Sparse Subspace Clustering (SSC) we formulate the problem as one of finding a sparse representation but include a new penalty term to take care of sequential data. We test our method on data drawn from infrared hyper spectral data, video sequences and face images. Our experiments show that our method, OSC, outperforms the state of the art methods: Spatial Subspace Clustering (SpatSC), Low-Rank Representation (LRR) and SSC.
序列数据的子空间聚类
我们提出了有序子空间聚类(OSC)来分割从子空间的顺序有序联合中提取的数据。当前的子空间聚类技术学习一组数据之间的关系,然后使用单独的聚类算法(如NCut)进行最终分割。相比之下,我们的技术在一定条件下,能够在不提供簇数作为参数的情况下对簇进行本质上的分割。与稀疏子空间聚类(SSC)类似,我们将问题表述为寻找稀疏表示之一,但包含一个新的惩罚项来照顾顺序数据。我们对红外高光谱数据、视频序列和人脸图像进行了测试。我们的实验表明,我们的方法OSC优于最先进的方法:空间子空间聚类(SpatSC),低秩表示(LRR)和SSC。
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