Physical-aware Cross-modal Adversarial Network for Wearable Sensor-based Human Action Recognition
Jianyuan Ni, Hao Tang, Anne H.H. Ngu, Gaowen Liu, Yan Yan

TL;DR
This paper introduces a physical-aware cross-modal adversarial framework that generates synthetic skeleton data from accelerometer signals to enhance wearable sensor-based human action recognition accuracy.
Contribution
The novel PCA framework synthesizes skeleton data from accelerometers with physical constraints, improving HAR performance without additional visual data.
Findings
Competitive accuracy on benchmark datasets
Effective synthesis of skeleton sequences from accelerometer data
Enhanced HAR classification performance
Abstract
Wearable sensor-based Human Action Recognition (HAR) has made significant strides in recent times. However, the accuracy performance of wearable sensor-based HAR is currently still lagging behind that of visual modalities-based systems, such as RGB video and depth data. Although diverse input modalities can provide complementary cues and improve the accuracy performance of HAR, wearable devices can only capture limited kinds of non-visual time series input, such as accelerometers and gyroscopes. This limitation hinders the deployment of multimodal simultaneously using visual and non-visual modality data in parallel on current wearable devices. To address this issue, we propose a novel Physical-aware Cross-modal Adversarial (PCA) framework that utilizes only time-series accelerometer data from four inertial sensors for the wearable sensor-based HAR problem. Specifically, we propose an…
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Taxonomy
TopicsHuman Pose and Action Recognition · Anomaly Detection Techniques and Applications · Video Surveillance and Tracking Methods
