Tensor voting toward feature space analysis

Jia Wang, Hanqing Lu, Qingshan Liu
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引用次数: 1

Abstract

In this paper, a general technique is proposed for the analysis of multi-dimensional feature space. The basic computational module of the technique is the tensor voting theory, which was formerly used for structure inference from sparse data. We analyze the methodology of tensor voting systematically. Its relation to kernel density estimation and mean shift is also established, based on what the utilities for two fundamental analyses of feature space, density estimation and mode detection, are discussed. Algorithms for two low-level vision tasks, discontinuity preserving smoothing and motion layer inference, are described as applications of tensor voting. Several experimental results illustrate its excellent performance.
面向特征空间分析的张量投票
本文提出了一种用于多维特征空间分析的通用技术。该技术的基本计算模块是张量投票理论,该理论以前用于从稀疏数据中进行结构推断。我们系统地分析了张量投票的方法。在讨论了密度估计和模态检测两种基本特征空间分析方法的基础上,建立了它与核密度估计和均值漂移的关系。两个低级视觉任务的算法,不连续保持平滑和运动层推理,被描述为张量投票的应用。实验结果证明了该方法的优良性能。
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