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基于 Kinect 传感器获取的骨骼信息对 K-Pop 舞蹈动作进行分类。

Classification of K-Pop Dance Movements Based on Skeleton Information Obtained by a Kinect Sensor.

机构信息

Electronics and Telecommunications Research Institute (ETRI), Daejeon 34129, Korea.

Department of Control and Instrumentation Engineering, Chosun University, Gwangju 61452, Korea.

出版信息

Sensors (Basel). 2017 Jun 1;17(6):1261. doi: 10.3390/s17061261.

DOI:10.3390/s17061261
PMID:28587177
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5492663/
Abstract

This paper suggests a method of classifying Korean pop (K-pop) dances based on human skeletal motion data obtained from a Kinect sensor in a motion-capture studio environment. In order to accomplish this, we construct a K-pop dance database with a total of 800 dance-movement data points including 200 dance types produced by four professional dancers, from skeletal joint data obtained by a Kinect sensor. Our classification of movements consists of three main steps. First, we obtain six core angles representing important motion features from 25 markers in each frame. These angles are concatenated with feature vectors for all of the frames of each point dance. Then, a dimensionality reduction is performed with a combination of principal component analysis and Fisher's linear discriminant analysis, which is called fisherdance. Finally, we design an efficient Rectified Linear Unit (ReLU)-based Extreme Learning Machine Classifier (ELMC) with an input layer composed of these feature vectors transformed by fisherdance. In contrast to conventional neural networks, the presented classifier achieves a rapid processing time without implementing weight learning. The results of experiments conducted on the constructed K-pop dance database reveal that the proposed method demonstrates a better classification performance than those of conventional methods such as KNN (K-Nearest Neighbor), SVM (Support Vector Machine), and ELM alone.

摘要

本文提出了一种基于 Kinect 传感器在运动捕捉工作室环境中获取的人体骨骼运动数据对韩国流行舞(K-pop)进行分类的方法。为了实现这一目标,我们从 Kinect 传感器获取的骨骼关节数据中构建了一个包含 800 个舞蹈动作数据点的 K-pop 舞蹈数据库,其中包括 4 位专业舞者创作的 200 种舞蹈类型。我们的动作分类由三个主要步骤组成。首先,我们从每个帧中的 25 个标记中获取代表重要运动特征的六个核心角度。这些角度与每个点舞蹈的所有帧的特征向量连接起来。然后,使用主成分分析和 Fisher 线性判别分析(称为 fisherdance)进行降维。最后,我们设计了一个基于高效修正线性单元(ReLU)的极端学习机分类器(ELMC),其输入层由 fisherdance 转换后的这些特征向量组成。与传统的神经网络相比,提出的分类器在不执行权重学习的情况下实现了快速的处理时间。在构建的 K-pop 舞蹈数据库上进行的实验结果表明,与 KNN(K-最近邻)、SVM(支持向量机)和单独的 ELM 等传统方法相比,该方法具有更好的分类性能。

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