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WiWrite: An Accurate Device-Free Handwriting Recognition System with COTS WiFi

机译:Wiwrite:一种准确的无设备手写识别系统,带有COTS WiFi

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Handwriting recognition system provides people a convenient and alternative way for writing in the air with fingers rather than typing keyboards. For people with blurred vision and patients with generalized hand neurological disease, writing in the air is particularly attracting due to the small input screen of smartphones and smartwatches. Existing recognition systems still face drawbacks such as requiring to wear dedicated devices, relatively low accuracy and infeasible for cross domain identification, which greatly limit the usability of these systems. To address these issues, we propose WiWrite, an accurate device-free handwriting recognition system which allows writing in the air without a need of attaching any device to the user. Specifically, we use Commercial Off-The-Shelf (COTS) WiFi hardware to achieve fine-grained finger tracking. We develop a CSI division scheme to process the noisy raw WiFi channel state information (CSI), which stabilizes the CSI phase and reduces the noise of the CSI amplitude. To automatically retain low noise data for identification, we propose a self-paced dense convolutional network (SPDCN), which consists of the self-paced loss function based on a modified convolutional neural network, together with a dense convolutional network. Comprehensive experiments are conducted to show the merits of WiWrite, revealing that, the recognition accuracies for the same-size input and different-size input are 93.6% and 89.0%, respectively. Moreover, WiWrite can achieve a one-fit-for-all recognition regardless of environment diversities.
机译:手写识别系统为人们提供了一种方便又替代的方式,用于用手指写入空中而不是键入键盘。对于视力模糊和具有广义手术疾病的患者的人来说,由于智能手机和智能手表的小输入屏幕,空气中的写作特别吸引。现有识别系统仍然面临缺点,例如需要佩戴专用设备,相对较低的精度和跨域识别不可行,这极大地限制了这些系统的可用性。为了解决这些问题,我们提出了一种准确的无设备手写识别系统,允许在空中写入,而无需将任何设备附加到用户。具体而言,我们使用商业现成(COTS)WiFi硬件来实现细粒度的手指跟踪。我们开发CSI划分方案来处理嘈杂的原始WiFi频道状态信息(CSI),其稳定CSI相位并降低CSI幅度的噪声。为了自动保留用于识别的低噪声数据,我们提出了一种自定位的密集卷积网络(SPDCN),其包括基于修改的卷积神经网络的自定位损耗功能,以及密集的卷积网络。进行综合实验以显示WIWRITE的优点,揭示相同尺寸输入和不同尺寸输入的识别精度分别为93.6%和89.0%。此外,无论环境多样区如何,Wiwrite都可以实现一个适合的识别。

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