Litcius/Paper detail

Towards Environment-Independent Human Activity Recognition using Deep Learning and Enhanced CSI

Zhenguo Shi, J. Andrew Zhang, Richard Yi Da Xu, Qingqing Cheng, Andre Pearce

202022 citationsDOIOpen Access PDF

Abstract

Deep learning has shown a strong potential in device-free human activity recognition (HAR). However, a fundamental challenge is ensuring accuracy, without re-training, when exposing a previously trained architecture to a new or unseen environment. To overcome the aforementioned challenge, this paper proposes an environment-robust channel state information (CSI) based HAR by leveraging the properties of a matching network (MatNet) and enhanced features (HAR-MN-EF). To improve the CSI quality, we propose a CSI cleaning and enhancement method (CSI-CE) that includes two key stages: activity-related information extraction (ARIE) and correlation feature extraction based on principal component analysis (CFE-PCA). The ARIE stage is able to effectively enhance the activity-dependent features whilst mitigating behavior-unrelated information. The CFE-PCA stage further improves the extracted features by filtering out the residual activity-unrelated data and the residual noise contained in signals from the former stage. The extracted features are then sequenced into the MatNet to create an environment-robust HAR. Experimental results confirm that an architecture trained by the proposed HAR-MN-EF can be directly adapted to a new environment, achieving reliable sensing accuracies without requiring additional effort.

Topics & Concepts

Computer scienceResidualArtificial intelligenceFeature extractionPrincipal component analysisPattern recognition (psychology)Activity recognitionChannel state informationMatching (statistics)Deep learningNoise (video)Machine learningFeature (linguistics)Data miningAlgorithmMathematicsImage (mathematics)StatisticsPhilosophyWirelessLinguisticsTelecommunicationsContext-Aware Activity Recognition SystemsAnomaly Detection Techniques and ApplicationsNon-Invasive Vital Sign Monitoring
Towards Environment-Independent Human Activity Recognition using Deep Learning and Enhanced CSI | Litcius