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A hidden Markov model based dynamic hand gesture recognition system using OpenCV

机译:基于OpenCV的基于隐马尔可夫模型的动态手势识别系统

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In this paper we propose a novel and faster system for dynamic hand gesture recognition by using Intel's image processing library OpenCV. Many hand gesture recognition methods using visual analysis have been proposed: syntactical analysis, neural networks, the hidden Markov model (HMM). In our research, a HMM is proposed for hand gesture recognition. The whole system is divided into three stages detection and tracking, feature extraction and training and recognition. The first stage uses a more non-conventional approach of application of Lαβ colour space for hand detection. While the process of features extraction is the combination of Hu invariant moments and hand orientation. For the training, Baum-Welch algorithm using Left-Right Banded (LRB) topology is applied and recognition is achieved by Forward algorithm with an average recognition rate above 90% for isolated hand gestures. Because of the use of OpenCV's inbuilt functions, the system is easy to develop, its recognition rate is quite fast and so the system can be practically used for real-time applications.
机译:在本文中,我们通过使用英特尔的图像处理库OpenCV提出了一种新颖,更快的动态手势识别系统。已经提出了许多使用视觉分析的手势识别方法:句法分析,神经网络,隐马尔可夫模型(HMM)。在我们的研究中,提出了一种HMM用于手势识别。整个系统分为三个阶段:检测和跟踪,特征提取以及训练和识别。第一阶段使用更非常规的方法将Lαβ颜色空间应用于手部检测。而特征提取的过程是Hu不变矩和手向的结合。对于训练,应用了使用左右带(LRB)拓扑的Baum-Welch算法,并通过正向算法实现了识别,对于孤立的手势,该算法的平均识别率超过90%。由于使用了OpenCV的内置功能,因此该系统易于开发,识别速度非常快,因此该系统可实际用于实时应用。

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