Multimodal fusion of EMG and vision for human grasp intent inference in prosthetic hand control

抓住 假手 推论 机械手 人工智能 计算机科学 计算机视觉 控制(管理) 物理医学与康复 人机交互 医学 程序设计语言
作者
Mehrshad Zandigohar,Mo Han,Mohammadreza Sharif,Sezen Yağmur Günay,Mariusz P. Furmanek,Mathew Yarossi,Paolo Bonato,Çağdaş D. Önal,Taşkın Padır,Deni̇z Erdoğmuş,Gunar Schirner
出处
期刊:Frontiers in Robotics and AI [Frontiers Media]
卷期号:11 被引量:1
标识
DOI:10.3389/frobt.2024.1312554
摘要

Objective: For transradial amputees, robotic prosthetic hands promise to regain the capability to perform daily living activities. Current control methods based on physiological signals such as electromyography (EMG) are prone to yielding poor inference outcomes due to motion artifacts, muscle fatigue, and many more. Vision sensors are a major source of information about the environment state and can play a vital role in inferring feasible and intended gestures. However, visual evidence is also susceptible to its own artifacts, most often due to object occlusion, lighting changes, etc. Multimodal evidence fusion using physiological and vision sensor measurements is a natural approach due to the complementary strengths of these modalities. Methods: In this paper, we present a Bayesian evidence fusion framework for grasp intent inference using eye-view video, eye-gaze, and EMG from the forearm processed by neural network models. We analyze individual and fused performance as a function of time as the hand approaches the object to grasp it. For this purpose, we have also developed novel data processing and augmentation techniques to train neural network components. Results: Our results indicate that, on average, fusion improves the instantaneous upcoming grasp type classification accuracy while in the reaching phase by 13.66% and 14.8%, relative to EMG (81.64% non-fused) and visual evidence (80.5% non-fused) individually, resulting in an overall fusion accuracy of 95.3%. Conclusion: Our experimental data analyses demonstrate that EMG and visual evidence show complementary strengths, and as a consequence, fusion of multimodal evidence can outperform each individual evidence modality at any given time.

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