Using SVD for Segmentation and Classification of Human Hand Actions

A. Cavallo
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引用次数: 2

Abstract

An automated strategy for decomposing time series into small, elementary subsequences is proposed. This is accomplished in two steps: first the time series must be decomposed into simpler sub-series (segmentation), next each sub series has to be suitably modeled or uniquely characterized (classification). In this paper, an approximation employing the first right singular vector of the data matrix is considered, and two new criteria for segmenting data are proposed and compared. The effectiveness of the proposed strategy is shown on a time series resulting from sensory data on a data-glove when a human picks a tin can. The strategy proves to be simple and reliable, and can be used as a basic ingredient for real-time detection and interpretation of human gestures.
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基于SVD的手部动作分割与分类
提出了一种将时间序列分解成小的、基本的子序列的自动策略。这分两个步骤完成:首先,必须将时间序列分解为更简单的子序列(分割),然后必须对每个子序列进行适当的建模或唯一表征(分类)。本文考虑了利用数据矩阵第一右奇异向量的近似,提出了两种新的数据分割准则,并进行了比较。当人捡起锡罐时,数据手套上的感官数据产生的时间序列显示了所提出策略的有效性。该策略简单可靠,可作为实时检测和解读人类手势的基本组成部分。
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