Publication | Open Access
Real-Time Human Activity Recognition with IMU and Encoder Sensors in Wearable Exoskeleton Robot via Deep Learning Networks
47
Citations
22
References
2022
Year
Convolutional Neural NetworkEngineeringMachine LearningHuman Pose EstimationWearable TechnologyWearable Exoskeleton RobotsHuman MonitoringMovement AnalysisRehabilitation RoboticsKinesiologyEmbedded Machine LearningRobot LearningKinematicsHuman MotionHealth SciencesMachine VisionMotion SynthesisRehabilitationDeep LearningEncoder SensorsExoskeleton RobotWearable RoboticsWearable Exoskeleton RobotHuman MovementRoboticsActivity RecognitionDeep 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 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.
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