Human Actions Modelling and Recognition in Low-Dimensional Feature Space

T. Hachaj, M. Ogiela, Katarzyna Koptyra
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引用次数: 9

Abstract

The aim of this paper is to prove that it is possible to model the set of multiple human actions in low-dimensional feature space so they can be nearly unambiguously distinguish with the help of classification algorithm. The most important condition that has to be satisfied to solve this problem is selection of proper features sets that fit to a particular actions group. We evaluate our methodology on the dataset consisted of 16 different Oyama Karate techniques performed by two professional sport (black belt) instructors and masters of Oyama Karate. The dataset consisted of 640 actions samples. As a classification algorithm we have used Gesture Description Language. We have used four different angle-based features sets. With that selection we have made actions descriptions that transformed initial motion capture dataset to 6 or 8 dimensional features space with maximally three keyframes. Beside only one class the recognition rate was at level of 88% to even 100%.
低维特征空间中的人类行为建模与识别
本文的目的是证明在低维特征空间中对多个人类行为集进行建模是可能的,从而可以在分类算法的帮助下几乎毫无歧义地区分它们。要解决这个问题,必须满足的最重要的条件是选择适合特定操作组的适当特征集。我们在由两名专业运动(黑带)教练和大山空手道大师表演的16种不同的大山空手道技术组成的数据集上评估了我们的方法。该数据集由640个动作样本组成。作为一种分类算法,我们使用了手势描述语言。我们使用了四种不同的基于角度的特性集。有了这个选择,我们做了动作描述,将初始动作捕捉数据集转换为6或8维特征空间,最多有三个关键帧。除了一个类别外,识别率在88%甚至100%的水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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