Biomimetic learning of hand gestures in a humanoid robot

Date

2024-07-18

Department

Program

Citation of Original Publication

Olikkal, Parthan, Dingyi Pei, Bharat Kashyap Karri, Ashwin Satyanarayana, Nayan M. Kakoty, and Ramana Vinjamuri. “Biomimetic Learning of Hand Gestures in a Humanoid Robot.” Frontiers in Human Neuroscience 18 (July 19, 2024). https://doi.org/10.3389/fnhum.2024.1391531.

Rights

CC BY 4.0 DEED Attribution 4.0 International

Abstract

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.