Real-Time Human Activity Recognition with IMU and Encoder Sensors in Wearable Exoskeleton Robot via Deep Learning Networks

Wearable exoskeleton robots have become a promising technology for supporting human motions in multiple tasks. Activity recognition in real-time provides useful information to enhance the robot's control assistance for daily tasks. This work implements a real-time activity recognition system ba...

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Veröffentlicht in:Sensors (Basel, Switzerland) Switzerland), 2022-12, Vol.22 (24), p.9690
Hauptverfasser: Jaramillo, Ismael Espinoza, Jeong, Jin Gyun, Lopez, Patricio Rivera, Lee, Choong-Ho, Kang, Do-Yeon, Ha, Tae-Jun, Oh, Ji-Heon, Jung, Hwanseok, Lee, Jin Hyuk, Lee, Won Hee, Kim, Tae-Seong
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Sprache:eng
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Zusammenfassung:Wearable exoskeleton robots have become a promising technology for supporting human motions in multiple tasks. Activity recognition in real-time provides useful information to enhance the robot's control assistance for daily tasks. This work implements a real-time activity recognition system based on the activity signals of an inertial measurement unit (IMU) and a pair of rotary encoders integrated into the exoskeleton robot. Five deep learning models have been trained and evaluated for activity recognition. As a result, a subset of optimized deep learning models was transferred to an edge device for real-time evaluation in a continuous action environment using eight common human tasks: stand, bend, crouch, walk, sit-down, sit-up, and ascend and descend stairs. These eight robot wearer's activities are recognized with an average accuracy of 97.35% in real-time tests, with an inference time under 10 ms and an overall latency of 0.506 s per recognition using the selected edge device.
ISSN:1424-8220
1424-8220
DOI:10.3390/s22249690