Multi-HMM classification for hand gesture recognition using two differing modality sensors

Kui Liu, Cheng Chen, R. Jafari, N. Kehtarnavaz
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引用次数: 31

Abstract

This paper presents a multi-Hidden Markov Model (HMM) classification approach for hand gesture recognition by utilizing two differing modality and low-cost sensors. The sensors consist of a Kinect depth camera and a wearable inertial sensor. It is shown that the multi-HMM classification based on nine signals that are simultaneously captured by these two sensors leads to a more robust recognition compared to the situation when only a single HMM classification is used to generate the likelihood probabilities of hand gestures. This approach is applied to the hand gestures of the $1Unistroke Recognizer application and the results obtained indicate a 7% improvement in the overall classification rate over a single HMM classification under realistic conditions.
基于两种不同模态传感器的手势识别多hmm分类
提出了一种利用两种不同模态和低成本传感器的多隐马尔可夫模型(HMM)分类方法用于手势识别。这些传感器包括一个Kinect深度摄像头和一个可穿戴惯性传感器。结果表明,与仅使用单个HMM分类生成手势的似然概率相比,基于这两个传感器同时捕获的9个信号的多HMM分类具有更强的鲁棒性。将这种方法应用于$1Unistroke识别器应用程序的手势,获得的结果表明,在现实条件下,与单一HMM分类相比,总体分类率提高了7%。
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