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From Signal to Image: Enabling Fine-Grained Gesture Recognition with Commercial Wi-Fi Devices

机译:从信号到图像:通过商业Wi-Fi设备实现细粒度的手势识别

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摘要

Gesture recognition acts as a key enabler for user-friendly human-computer interfaces (HCI). To bridge the human-computer barrier, numerous efforts have been devoted to designing accurate fine-grained gesture recognition systems. Recent advances in wireless sensing hold promise for a ubiquitous, non-invasive and low-cost system with existing Wi-Fi infrastructures. In this paper, we propose DeepNum, which enables fine-grained finger gesture recognition with only a pair of commercial Wi-Fi devices. The key insight of DeepNum is to incorporate the quintessence of deep learning-based image processing so as to better depict the influence induced by subtle finger movements. In particular, we make multiple efforts to transfer sensitive Channel State Information (CSI) into depth radio images, including antenna selection, gesture segmentation and image construction, followed by noisy image purification using high-dimensional relations. To fulfill the restrictive size requirements of deep learning model, we propose a novel region-selection method to constrain the image size and select qualified regions with dominant color and texture features. Finally, a 7-layer Convolutional Neural Network (CNN) and SoftMax function are adopted to achieve automatic feature extraction and accurate gesture classification. Experimental results demonstrate the excellent performance of DeepNum, which recognizes 10 finger gestures with overall accuracy of 98% in three typical indoor scenarios.
机译:手势识别充当用户友好的人机接口(HCI)的关键推动者。为了弥合人计算机屏障,已经致力于设计精确的细粒度手势识别系统。无线传感最近的进展,具有现有Wi-Fi基础设施的无处不在的,无侵入性和低成本系统的承诺。在本文中,我们提出了Deepnum,这使得能够用一副商用Wi-Fi设备实现细粒度的手势识别。 Deadnum的关键洞察力是纳入基于深度学习的图像处理的Quintessence,以便更好地描绘由微妙的手指运动引起的影响。特别地,我们多次努力将敏感信道状态信息(CSI)转移到深度无线图像,包括天线选择,手势分割和图像结构,然后使用高维关系净化噪声图像净化。为了满足深度学习模型的限制性要求,我们提出了一种新颖的区域选择方法来限制图像大小,并选择具有主色和纹理特征的合格区域。最后,采用了7层卷积神经网络(CNN)和SoftMax功能来实现自动特征提取和精确的手势分类。实验结果表明,Deadnum的优异性能,其在三种典型室内情景中识别10个手势,整体精度为98%。

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