Hierarchical radar data analysis for activity and personnel recognition

Journal Article (2020)
Author(s)

Xingzhuo Li (University of Glasgow, University of Electronic Science and Technology of China)

Zhenghui Li (University of Glasgow)

Francesco Fioranelli (Microwave Sensing, Signals & Systems)

Shufan Yang (University of Glasgow)

Olivier Romain (University of Cergy-Pontoise)

Julien Le Kernec (University of Electronic Science and Technology of China, University of Glasgow, University of Cergy-Pontoise)

Microwave Sensing, Signals & Systems
DOI related publication
https://doi.org/10.3390/rs12142237 Final published version
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Publication Year
2020
Language
English
Microwave Sensing, Signals & Systems
Issue number
14
Volume number
12
Article number
2237
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285
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Abstract

Radar-based classification of human activities and gait have attracted significant attention with a large number of approaches proposed in terms of features and classification algorithms. A common approach in activity classification attempts to find the algorithm (features plus classifier) that can deal with multiple activities analysed in one study such as walking, sitting, drinking and crawling. However, using the same set of features for multiple activities can be suboptimal per activity and not take into account the diversity of kinematic movements that could be captured by diverse features. In this paper, we propose a hierarchical classification approach that uses a large variety of features including but not limited to energy features like entropy and energy curve, physical features like centroid and bandwidth, image-based features like skewness extracted from multiple radar data domains. Feature selection is used at each step of the hierarchical model to select the best set of features to discriminate the target activity from the others, showing improvements with respect to the more conventional approach of using a multiclass model. The proposed approach is validated on a large dataset with 1078 recorded samples of varying length from 5 s to 10 s of experimental data, yielding 95.4% accuracy to classify six activities. The approach is also validated on a personnel recognition task to identify individual subjects from their walking gait, yielding 83.7% accuracy for ten subjects and 68.2% for a significantly larger group of subjects, i.e., 60 people.