Environment-based Assistance Modulation for a Hip Exosuit via Computer Vision
Enrica Tricomi, Mirko Mossini, Francesco Missiroli, Nicola Lotti,, Michele Xiloyannis, Loris Roveda, and Lorenzo Masia

TL;DR
This study presents a computer vision-based control system for a hip exosuit that classifies terrains in real-time and adapts assistance, significantly improving metabolic efficiency during walking over varied terrains.
Contribution
The paper introduces a novel environment-based assistance modulation method for a hip exosuit using RGB camera classification, enhancing adaptive support during walking.
Findings
Real-time terrain classification accuracy above 85%
Metabolic savings up to 20% during stair climbing
Outperforms fixed assistance in energy efficiency
Abstract
Just like in humans vision plays a fundamental role in guiding adaptive locomotion, when designing the control strategy for a walking assistive technology, Computer Vision may bring substantial improvements when performing an environment-based assistance modulation. In this work, we developed a hip exosuit controller able to distinguish among three different walking terrains through the use of an RGB camera and to adapt the assistance accordingly. The system was tested with seven healthy participants walking throughout an overground path comprising of staircases and level ground. Subjects performed the task with the exosuit disabled (Exo Off), constant assistance profile (Vision Off ), and with assistance modulation (Vision On). Our results showed that the controller was able to promptly classify in real-time the path in front of the user with an overall accuracy per class above the…
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