基于LSTM和CNN架构的3D动态手势识别

Chinmaya R. Naguri, Razvan C. Bunescu
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引用次数: 34

摘要

手势提供了一种自然的、非语言的交流形式,可以增强或取代其他交流方式,如说话或写作。与语音命令一样,手势正在成为游戏、增强现实和虚拟现实平台中交互的主要手段。识别的准确性、灵活性和计算成本是影响这些新技术中手势的结合以及随后从多模态语料库中检索手势的一些主要因素。在本文中,我们提出了基于长短期记忆(LSTM)和卷积神经网络(CNN)的快速高精度手势识别系统,该系统被训练来处理从红外传感器获取的3D手部位置和速度的输入序列。当对六种类型手势的实时识别进行评估时,所提出的架构获得了97%的f测量值,显示出在新型人机界面中的实际应用的巨大潜力。
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Recognition of Dynamic Hand Gestures from 3D Motion Data Using LSTM and CNN Architectures
Hand gestures provide a natural, non-verbal form of communication that can augment or replace other communication modalities such as speech or writing. Along with voice commands, hand gestures are becoming the primary means of interaction in games, augmented reality, and virtual reality platforms. Recognition accuracy, flexibility, and computational cost are some of the primary factors that can impact the incorporation of hand gestures in these new technologies, as well as their subsequent retrieval from multimodal corpora. In this paper, we present fast and highly accurate gesture recognition systems based on long short-term memory (LSTM) and convolutional neural networks (CNN) that are trained to process input sequences of 3D hand positions and velocities acquired from infrared sensors. When evaluated on real time recognition of six types of hand gestures, the proposed architectures obtain 97% F-measure, demonstrating a significant potential for practical applications in novel human-computer interfaces.
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