Subspace and motion segmentation via local subspace estimation

A. Sekmen, A. Aldroubi
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引用次数: 2

Abstract

Subspace segmentation and clustering of high dimensional data drawn from a union of subspaces are important with practical robot vision applications, such as smart airborne video surveillance. This paper presents a clustering algorithm for high dimensional data that comes from a union of lower dimensional subspaces of equal and known dimensions. Rigid motion segmentation is a special case of this more general subspace segmentation problem. The algorithm matches a local subspace for each trajectory vector and estimates the relationships between trajectories. It is reliable in the presence of noise, and it has been experimentally verified by the Hopkins 155 Dataset.
基于局部子空间估计的子空间和运动分割
子空间分割和从子空间联合中提取高维数据的聚类对于实际机器人视觉应用,如智能机载视频监控,是非常重要的。本文提出了一种高维数据聚类算法,这些高维数据来自于维数相等且已知的低维子空间的并集。刚性运动分割是这种更普遍的子空间分割问题的一种特殊情况。该算法为每个轨迹向量匹配一个局部子空间,并估计轨迹之间的关系。它在存在噪声的情况下是可靠的,并且已经通过霍普金斯155数据集的实验验证。
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