一种基于CNN-LSTM和信道关注的WiFi手势识别方法

Yu Gu, Jiang Li
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引用次数: 5

摘要

随着无线传感、智能人机交互等领域的快速发展,基于WiFi的手势识别已成为一个重要的研究领域。基于WiFi的手势识别具有非接触和隐私保护的优点。此外,家庭WiFi的使用使得该技术具有广泛的应用场景。目前,大多数基于WiFi的手势识别模型只能在特定领域取得较好的效果。当改变环境或手势动作的方向时,模型的性能会变得很差。本文提出了一种基于信道注意机制和CNN-LSTM融合模型的手势识别系统。渠道注意机制一方面可以考虑不同渠道特征的重要性;另一方面,CNN-LSTM融合模型可以在时间域和空间域提取更丰富的特征。该系统在公共数据集widar3.0的多个领域中取得了较好的分类效果。
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A Novel WiFi Gesture Recognition Method Based on CNN-LSTM and Channel Attention
With the rapid development of wireless sensing, intelligent human-computer interaction, and other fields, gesture recognition based on WiFi has become an important research field. Gesture recognition based on WiFi has the advantages of non-contact and privacy protection. In addition, the use of home WiFi makes the technology have a broad application scenario. At present, most gesture recognition models based on WiFi can only achieve good results in a specific domain. When changing the environment or the orientation of gesture action, the performance of the model becomes very poor. This paper proposes a gesture recognition system based on the channel attention mechanism and CNN-LSTM fusion model. On the one hand, the channel attention mechanism can consider the importance of different channel characteristics; On the other hand, the CNN-LSTM fusion model can extract richer features in the time domain and space domain. The system has achieved good classification results in multiple domains of the public data set widar3.0.
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