基于Wi-Fi的轻型移动时间卷积网络多位置人体活动识别

Zhiwei Li, Ting Jiang, JiaCheng Yu, Xue Ding, Yi Zhong, Yang Liu
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引用次数: 1

摘要

基于wi - fi的人体活动识别在物联网领域得到了广泛的应用。虽然最近的工作在多地点的人类活动识别方面取得了很大的进展,但它们大多依赖于高分辨率的数据、足够的训练样本和大规模的网络来模拟人类活动,而忽略了cpu驱动设备上的串行浮点运算和内存消耗限制。因此,为了解决上述问题,本文提出了一种轻量级移动时间卷积网络(LM-TCN)。一方面,该方法利用全一维卷积框架提供时移不变的归纳偏置。另一方面,反向瓶颈与门控机构的结合优化了传统残余结构的计算负荷,避免了在少量训练样本下的过拟合。实验结果表明,所提LM-TCN在所有24个预定义位置上的平均准确率为95.2%,比基线TCN提高了2.9%,计算成本降至TCN的6%。值得注意的是,每个地点的每个活动只使用10个样本和15个子载体进行训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Lightweight Mobile Temporal Convolution Network for Multi-Location Human Activity Recognition based on Wi-Fi
Wi-Fi-based human activity recognition has been widely adopted in the field of the Internet of Things. Although recent works have made great progress for human activity recognition at multiple locations, most of them rely on high-resolution data, adequate training samples and large-scale networks to model human activities, which ignores serial floating-point operations on CPU-driven devices and memory consumption limitations. Therefore, to address above issue, this paper proposes a Lightweight Mobile Temporal Convolution Network (LM-TCN). On the one hand, the proposed approach uses the fully 1-D convolution framework to provide time-shift invariant inductive bias. On the other hand, the combination of invert bottleneck and gated mechanism optimizes the computational load of the conventional residual structure to prevent overfitting under few training samples. Experimental results show that the average accuracy of the proposed LM-TCN is 95.2% across all 24 predefined locations, which is 2.9% higher than the baseline TCN while the calculation cost is reduced to 6% of TCN. It is worth noting that only 10 samples and 15 subcarriers for each activity at each location are used for training.
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