仿人机器人手势的仿生学习

IF 2.4 3区 医学 Q3 NEUROSCIENCES Frontiers in Human Neuroscience Pub Date : 2024-07-19 DOI:10.3389/fnhum.2024.1391531
Parthan Olikkal, Dingyi Pei, Bharat Kashyap Karri, Ashwin Satyanarayana, Nayan M. Kakoty, Ramana Vinjamuri
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引用次数: 0

摘要

手势是一种自然而直观的交流方式,将这种交流方式整合到机器人系统中,为改善人与机器人的协作提供了巨大的潜力。运动神经科学的最新进展主要集中在通过协同作用(也称运动基元)复制人类手部动作。协同作用是运动的基本组成部分,是中枢神经系统产生和控制运动的潜在策略。确定协同作用如何促进运动有助于机器人、外骨骼和假肢的灵巧控制,并将其应用扩展到康复领域。本文通过一台 RGB 摄像机记录了 33 个静态手势,并通过 MediaPipe 框架实时识别了参与者用主导手做出的各种姿势。假设初始姿势为张开手掌,则可从所有这些手势中获得统一的关节角速度。通过应用降维方法,从这些关节角速度中获得了运动学协同作用。利用能解释 98% 动作方差的运动协同效应,通过凸优化重建新的手势。当参与者演示各种手势时,重建的手势和选定的运动学协同作用被实时翻译到仿人机器人 Mitra 上。结果表明,只需使用少量的运动协同就能生成各种手势,准确率高达 95.7%。此外,利用低维协同控制高维终端效应器有望实现近乎自然的人机协作。
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Biomimetic learning of hand gestures in a humanoid robot
Hand gestures are a natural and intuitive form of communication, and integrating this communication method into robotic systems presents significant potential to improve human-robot collaboration. Recent advances in motor neuroscience have focused on replicating human hand movements from synergies also known as movement primitives. Synergies, fundamental building blocks of movement, serve as a potential strategy adapted by the central nervous system to generate and control movements. Identifying how synergies contribute to movement can help in dexterous control of robotics, exoskeletons, prosthetics and extend its applications to rehabilitation. In this paper, 33 static hand gestures were recorded through a single RGB camera and identified in real-time through the MediaPipe framework as participants made various postures with their dominant hand. Assuming an open palm as initial posture, uniform joint angular velocities were obtained from all these gestures. By applying a dimensionality reduction method, kinematic synergies were obtained from these joint angular velocities. Kinematic synergies that explain 98% of variance of movements were utilized to reconstruct new hand gestures using convex optimization. Reconstructed hand gestures and selected kinematic synergies were translated onto a humanoid robot, Mitra, in real-time, as the participants demonstrated various hand gestures. The results showed that by using only few kinematic synergies it is possible to generate various hand gestures, with 95.7% accuracy. Furthermore, utilizing low-dimensional synergies in control of high dimensional end effectors holds promise to enable near-natural human-robot collaboration.
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来源期刊
Frontiers in Human Neuroscience
Frontiers in Human Neuroscience 医学-神经科学
CiteScore
4.70
自引率
6.90%
发文量
830
审稿时长
2-4 weeks
期刊介绍: Frontiers in Human Neuroscience is a first-tier electronic journal devoted to understanding the brain mechanisms supporting cognitive and social behavior in humans, and how these mechanisms might be altered in disease states. The last 25 years have seen an explosive growth in both the methods and the theoretical constructs available to study the human brain. Advances in electrophysiological, neuroimaging, neuropsychological, psychophysical, neuropharmacological and computational approaches have provided key insights into the mechanisms of a broad range of human behaviors in both health and disease. Work in human neuroscience ranges from the cognitive domain, including areas such as memory, attention, language and perception to the social domain, with this last subject addressing topics, such as interpersonal interactions, social discourse and emotional regulation. How these processes unfold during development, mature in adulthood and often decline in aging, and how they are altered in a host of developmental, neurological and psychiatric disorders, has become increasingly amenable to human neuroscience research approaches. Work in human neuroscience has influenced many areas of inquiry ranging from social and cognitive psychology to economics, law and public policy. Accordingly, our journal will provide a forum for human research spanning all areas of human cognitive, social, developmental and translational neuroscience using any research approach.
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