AAH: accurate activity recognition of human beings using WiFi signals

作者:Gu, Yu*; Quan, Lianghu; Ren, Fuji
来源:Concurrency and Computation: Practice and Experience (CCPE) , 2016, 28(14): 3910-3926.
DOI:10.1002/cpe.3741

摘要

The flourishing social networks nowadays have greatly enriched our ways of communications and thus brought people in the world much closer than ever. However, critical contexts of the traditional face-to-face communications, for example, body gestures, could be missing during the online communication, hampering the user experiences. To fill in the blank, this paper presents a passive and devices-free activity recognition system, by harvesting fingerprints of different activities from ubiquitous WiFi signals. It can be integrated into any existing WLAN networks without additional hardware supports. Also, it does not need the subjects to be cooperative during the recognition process. A prototype system is built and evaluated via extensive real-world experiments. By comparing with three state-of-the art solutions, that is, K-nearest neighbor, naive Bayes, and bagging, we show the superiority of the proposed method in terms of accuracy and complexity.