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Object Recognition, Dynamic Contact Simulation, Detection, and Control of the Flexible Musculoskeletal Hand Using a Recurrent Neural Network With Parametric Bias

Kento Kawaharazuka, Kei Tsuzuki, Moritaka Onitsuka, Yuki Asano, Kei Okada, Koji Kawasaki, Masayuki Inaba

2020IEEE Robotics and Automation Letters22 citationsDOIOpen Access PDF

Abstract

The flexible musculoskeletal hand is difficult to modelize, and its model can change constantly due to deterioration over time, irreproducibility of initialization, etc. Also, for object recognition, contact detection, and contact control using the hand, it is desirable not to use a neural network trained for each task, but to use only one integrated network. Therefore, we develop a method to acquire a sensor state equation of the musculoskeletal hand using a recurrent neural network with parametric bias. By using this network, the hand can realize recognition of the grasped object, contact simulation, detection, and control, and can cope with deterioration over time, irreproducibility of initialization, etc. by updating parametric bias. We apply this study to the hand of the musculoskeletal humanoid Musashi and show its effectiveness.

Topics & Concepts

InitializationComputer scienceArtificial neural networkParametric statisticsObject (grammar)Artificial intelligenceTask (project management)Machine learningSimulationComputer visionEngineeringMathematicsProgramming languageStatisticsSystems engineeringRobot Manipulation and LearningSoft Robotics and ApplicationsMuscle activation and electromyography studies
Object Recognition, Dynamic Contact Simulation, Detection, and Control of the Flexible Musculoskeletal Hand Using a Recurrent Neural Network With Parametric Bias | Litcius