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Real-time gesture recognition system and application

机译:实时手势识别系统及应用

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摘要

In this paper, we consider a vision-based system that can interpret a user's gestures in real time to manipulate windows and objects within a graphical user interface. A hand segmentation procedure first extracts binary hand blob(s) from each frame of the acquired image sequence. Fourier descriptors are used to represent the shape of the hand blobs, and are input to radial-basis function (RBF) network(s) for pose classification. The pose likelihood vector from the RBF network output is used as input to the gesture recognizer, along with motion information. Gesture recognition performances using hidden Markov models (HMM) and recurrent neural networks (RNN) were investigated. Test results showed that the continuous HMM yielded the best performance with gesture recognition rates of 90.2%. Experiments with combining the continuous HMMs and RNNs revealed that a linear combination of the two classifiers improved the classification results to 91.9%. The gesture recognition system was deployed in a prototype user interface application, and users who tested it found the gestures intuitive and the application easy to use. Real time processing rates of up to 22 frames per second were obtained.
机译:在本文中,我们考虑一种基于视觉的系统,该系统可以实时解释用户的手势,以在图形用户界面中操纵窗口和对象。手分割过程首先从获取的图像序列的每一帧中提取二进制手斑点。傅里叶描述符用于表示手部斑点的形状,并输入到径向基函数(RBF)网络进行姿势分类。来自RBF网络输出的姿势似然矢量与运动信息一起用作手势识别器的输入。研究了使用隐马尔可夫模型(HMM)和递归神经网络(RNN)进行的手势识别性能。测试结果表明,连续的HMM以90.2%的手势识别率产生了最佳性能。结合连续HMM和RNN进行的实验表明,两个分类器的线性组合将分类结果提高到91.9%。手势识别系统已部署在原型用户界面应用程序中,对其进行测试的用户发现手势直观且该应用程序易于使用。获得了高达每秒22帧的实时处理速率。

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