Abstract
Recently, WiFi-based gesture recognition has attracted increasing attention. Due to the sensitivity ofWiFi signals to environments, an activity recognition model trained at a specific place can hardly work well for other places. To tackle this challenge, we propose WiHand, a location independent gesture recognition system based on commodity WiFi devices. Leveraging the low rank and sparse decomposition, WiHand separates gesture signal from background information, thus making it resilient to location variation. Extensive evaluations showed thatWiHand can achieve an average accuracy of 93% for various locations. In addition,WiHand works well under through the wall scenario.
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CITATION STYLE
Lu, Y., Lv, S., & Wang, X. (2019). Towards location independent gesture recognition with commodity WIFI devices. Electronics (Switzerland), 8(10). https://doi.org/10.3390/electronics8101069
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