Human gesture recognition using millimeter wave (mmWave) signals provides attractive applications including smart home and in-car interface. While existing works achieve promising performance under controlled settings, practical applications are still limited due to the need of intensive data collection, extra training efforts when adapting to new domains (i.e. environments, persons and locations) and poor performance for real-time recognition. In this paper, we propose DI-Gesture, a domain-independent and real-time mmWave gesture recognition system. Specifically, we first derive the signal variation corresponding to human gestures with spatial-temporal processing. To enhance the robustness of the system and reduce data collecting efforts, we design a data augmentation framework based on the correlation between signal patterns and gesture variations. Furthermore, we propose a dynamic window mechanism to perform gesture segmentation automatically and accurately, thus enable real-time recognition. Finally, we build a lightweight neural network to extract spatial-temporal information from the data for gesture classification. Extensive experimental results show DI-Gesture achieves an average accuracy of 97.92%, 99.18% and 98.76% for new users, environments and locations, respectively. In real-time scenario, the accuracy of DI-Gesutre reaches over 97% with average inference time of 2.87ms, which demonstrates the superior robustness and effectiveness of our system.
翻译:使用毫米波(mmWave)信号的人类手势识别信号提供了有吸引力的应用,包括智能的家庭和时装界面。虽然现有工程在受控环境中取得了有希望的绩效,但实际应用仍然有限,因为需要集中收集数据,在适应新领域(例如环境、人员和地点)时需要额外培训,实时识别的性能较差。在本文件中,我们提议D-Gesture,这是一个域独立和实时毫米Wave动作识别系统。具体地说,我们首先从人类手势和空间-时装处理中获取信号变异。为了提高系统稳健性并减少数据收集工作,我们根据信号模式和动作变异之间的相互关系设计了一个数据增强框架。此外,我们提议了一个动态窗口机制,以便自动和准确地进行手势分割,从而能够实时识别。最后,我们建议建立一个轻量的神经网络,从数据中提取空间-时装识别信息,用于姿态分类。我们广泛的实验结果显示,DI-Gsture 达到97.92%、99.18和98.76%的平均精确度。我们的新用户、环境和地点的准确度分别为97G的准确度。