Robotic Action-state Evaluation via Siamese Neural Network

Robotic Action-state Evaluation via Siamese Neural Network

Title: Robotic Action-state Evaluation via Siamese Neural Network
Authors: Xiang Chang (Aberystwyth University); Fei Chao (Aberystwyth University);
Year: 2022
Citation: Chang, X., Chao, F., (2022). Robotic Action-state Evaluation via Siamese Neural Network. UKRAS22 Conference “Robotics for Unconstrained Environments” Proceedings, 14-15. doi: 10.31256/Ss9Aa2K

Robotic action state evaluation
Siamese neural network
Imitation learning
Few-shot learning

Abstract:

Abstract—Robotic imitation learning methods assist robots to operate in evolving and unconstrained environments. However, current robotic state representation imitation learning methods still must involve human experts to provide sparse rewards that indicate whether robots successfully complete tasks. However, enabling robots to make the action-state evaluation autonomously still remains a challenge, especially for multi-stage complex tasks. Therefore, in this work, we propose a novel Siamese neural network-based robotic action state evaluation system in
an imitation learning system, so as to replace human experts in a multi-stage imitation learning process and improve the learning efficiency. One target learning footage is divided into several stages; for each stage, two Siamese network frameworks are created to assess the robotic action-states in terms of both movement and environment changes.

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