Litcius/Paper detail

WiFi-based Human Activity Recognition using Raspberry Pi

Glenn S. Forbes, Stewart Massie, Susan Craw

202043 citationsDOIOpen Access PDF

Abstract

Ambient, non-intrusive approaches to smart home health monitoring, while limited in capability, are preferred by residents. More intrusive methods of sensing, such as video and wearables, can offer richer data but at the cost of lower resident uptake, in part due to privacy concerns. A radio frequency-based approach to sensing, Channel State Information (CSI), can make use of low cost off-the-shelf WiFi hardware. We have implemented an activity recognition system on the Raspberry Pi 4, one of the world's most popular embedded boards. We have implemented an classification system using the Pi to demonstrate its capability for activity recognition. This involves performing data collection, interpretation and windowing, before supplying the data to a classification model. In this paper, the capabilities of the Raspberry Pi 4 at performing activity recognition on CSI data are investigated. We have developed and publicly released a data interaction framework, capable of interpreting, processing and visualising data from a range of CSI-capable hardware. Furthermore, CSI data captured for these experiments during various activity performances have also been made publicly available. We then train a Deep Convolutional LSTM model to classify the activities. Our experiments, performed in a small apartment, achieve 92% average accuracy on 11 activity classes.

Topics & Concepts

Activity recognitionComputer scienceRaspberry piChannel state informationConvolutional neural networkAssisted livingWearable computerReal-time computingArtificial intelligenceEmbedded systemComputer hardwareWirelessInternet of ThingsTelecommunicationsNursingMedicineIndoor and Outdoor Localization TechnologiesContext-Aware Activity Recognition SystemsWireless Networks and Protocols