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Alex X. Liu

Researcher at Michigan State University

Publications -  375
Citations -  14559

Alex X. Liu is an academic researcher from Michigan State University. The author has contributed to research in topics: Computer science & Firewall (construction). The author has an hindex of 56, co-authored 350 publications receiving 11660 citations. Previous affiliations of Alex X. Liu include Nanjing University & Chinese Academy of Sciences.

Papers
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Proceedings ArticleDOI

Understanding and Modeling of WiFi Signal Based Human Activity Recognition

TL;DR: CARM is a CSI based human Activity Recognition and Monitoring system that quantitatively builds the correlation between CSI value dynamics and a specific human activity and recognizes a given activity by matching it to the best-fit profile.
Proceedings ArticleDOI

Keystroke Recognition Using WiFi Signals

TL;DR: It is shown for the first time that WiFi signals can also be exploited to recognize keystrokes, which is critical for ensuring the security of computer systems and the privacy of human users as what being typed could be passwords or privacy sensitive information.
Proceedings ArticleDOI

Gait recognition using wifi signals

TL;DR: The intuition is that due to the differences in gaits of different people, the WiFi signal reflected by a walking human generates unique variations in the Channel State Information on the WiFi receiver, so WifiU is proposed, which uses commercial WiFi devices to capture fine-grained gait patterns to recognize humans.
Journal ArticleDOI

Device-Free Human Activity Recognition Using Commercial WiFi Devices

TL;DR: A Channel State Information (CSI)-based human Activity Recognition and Monitoring system (CARM) based on a CSI-speed model that quantifies the relation between CSI dynamics and human movement speeds and human activities.
Proceedings ArticleDOI

Device-free gesture tracking using acoustic signals

TL;DR: This paper proposes LLAP, a device-free gesture tracking scheme that can be deployed on existing mobile devices as software, without any hardware modification, and implemented and evaluated LLAP using commercial-off-the-shelf mobile phones.