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Real-time gesture recognition based on motion quality analysis

机译:基于运动质量分析的实时手势识别

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摘要

This paper presents a robust and anticipative realtime gesture recognition and its motion quality analysis module. By utilizing a motion capture device, the system recognizes gestures performed by a human, where the recognition process is based on skeleton analysis and motion features computation. Gestures are collected from a single person. Skeleton joints are used to compute features which are stored in a reference database, and Principal Component Analysis (PCA) is computed to select the most important features, useful in discriminating gestures. During real-time recognition, using distance measures, real-time selected features are compared to the reference database to find the most similar gesture. Our evaluation results show that: i) recognition delay is similar to human recognition delay, ii) our module can recognize several gestures performed by different people and is morphology-independent, and iii) recognition rate is high: all gestures are recognized during gesture stroke. Results also show performance limits.
机译:本文提出了一种鲁棒且可预测的实时手势识别及其运动质量分析模块。通过利用运动捕获设备,系统识别人的手势,其中识别过程基于骨骼分析和运动特征计算。手势是从一个人那里收集的。骨骼关节用于计算存储在参考数据库中的特征,主成分分析(PCA)用于选择最重要的特征,这些特征可用于区分手势。在实时识别过程中,使用距离测量,将实时选择的特征与参考数据库进行比较,以找到最相似的手势。我们的评估结果表明:i)识别延迟类似于人类的识别延迟,ii)我们的模块可以识别不同人执行的多个手势,并且与形态无关,并且iii)识别率很高:在手势笔划期间可以识别所有手势。结果还显示了性能极限。

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