Continual Learning from Synthetic Data for a Humanoid Exercise Robot
Nicolas Duczek, Matthias Kerzel, Stefan Wermter

TL;DR
This paper introduces a continual learning approach using a Grow-When-Required network with recurrent connections to enable a humanoid robot to learn and adapt to human exercises from synthetic data, ensuring robustness to user positioning and body variations.
Contribution
The paper presents a novel GWR-based architecture that learns from synthetic exercise data, adapts online to different body types, and maintains robustness against positional variations.
Findings
The GWR architecture successfully learns exercise patterns from synthetic avatars.
The system adapts to different body measurements without catastrophic forgetting.
Robustness to translation and rotation variations in user positioning is achieved.
Abstract
In order to detect and correct physical exercises, a Grow-When-Required Network (GWR) with recurrent connections, episodic memory and a novel subnode mechanism is developed in order to learn spatiotemporal relationships of body movements and poses. Once an exercise is performed, the information of pose and movement per frame is stored in the GWR. For every frame, the current pose and motion pair is compared against a predicted output of the GWR, allowing for feedback not only on the pose but also on the velocity of the motion. In a practical scenario, a physical exercise is performed by an expert like a physiotherapist and then used as a reference for a humanoid robot like Pepper to give feedback on a patient's execution of the same exercise. This approach, however, comes with two challenges. First, the distance from the humanoid robot and the position of the user in the camera's view…
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Taxonomy
TopicsHuman Pose and Action Recognition · Context-Aware Activity Recognition Systems · Anomaly Detection Techniques and Applications
