Visual Cues to Improve Myoelectric Control of Upper Limb Prostheses
Andrea Gigli, Arjan Gijsberts, Valentina Gregori, Matteo Cognolato,, Manfredo Atzori, Barbara Caputo

TL;DR
This paper presents a multimodal approach combining gaze tracking and electromyography to enhance the control accuracy of upper limb prostheses, addressing signal instability issues.
Contribution
It introduces an automated method to detect stable gaze fixations and integrates high-level visual features with EMG data for improved grasp classification.
Findings
Gaze information significantly improves classification accuracy.
The method is effective across various grasp types.
Accuracy gains are most notable during movement transitions.
Abstract
The instability of myoelectric signals over time complicates their use to control highly articulated prostheses. To address this problem, studies have tried to combine surface electromyography with modalities that are less affected by the amputation and environment, such as accelerometry or gaze information. In the latter case, the hypothesis is that a subject looks at the object he or she intends to manipulate and that knowing this object's affordances allows to constrain the set of possible grasps. In this paper, we develop an automated way to detect stable fixations and show that gaze information is indeed helpful in predicting hand movements. In our multimodal approach, we automatically detect stable gazes and segment an object of interest around the subject's fixation in the visual frame. The patch extracted around this object is subsequently fed through an off-the-shelf deep…
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