赫尔凹凸缺陷特征在人体活动识别中的应用

M. Youssef, V. Asari, R. Tompkins, J. Foytik
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引用次数: 7

摘要

活动识别已经应用于许多不同的应用,从监测到医学分析。对于计算机视觉来说,解释人类行为通常是一个复杂的问题。动作可以通过基于形状、运动或区域的算法进行分类。虽然它们都有各自的优点,但我们考虑了一种利用凸性缺陷的特征提取方法。该算法通过对船体凸性缺陷进行特征提取,提供了一种独特的动作识别方法。具体来说,我们围绕感兴趣的分割轮廓创建一个船体,其中存在于船体中的区域被识别。特征数据库是通过多个个体的特征数据集创建的。这些特征点在逐行帧之间进行配准,然后进行归一化分析。利用主成分分析(PCA)对特征点进行不同姿态的分类。从那里进行测试和训练,观察到主要人类活动的分类。该方法提供了一种鲁棒和准确的方法来识别动作,并且不受大小和人体形状的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hull convexity defects features for human activity recognition
Activity recognition has been applied to many varied applications ranging from surveillance to medical analysis. Interpreting human actions is often a complex problem for computer vision. Actions can be classified through shape, motion or region based algorithms. While all have their distinct advantages, we consider a feature extraction approach using convexity defects. This algorithmic approach offers a unique method for identifying actions by extracting features from hull convexity defects. Specifically, we create a hull around the segmented silhouette of interest in which the regions that exist in the hull are recognized. A feature database is created through a dataset of features for multiple individuals. These feature points are registered between progressive frames and then normalized for analysis. Using Principal Component Analysis (PCA), the feature points are classified to different poses. From there testing and training is performed to observe the classification into major human activities. This approach offers a robust and accurate method to identify actions and is invariant to size and human shape.
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