A task-sequencing simulator in robotics manipulation to integrate simulation-for-learning and simulation-for-execution is introduced. Unlike existing machine-learning simulation where a non-decomposed simulation is used to simulate a training scenario, the task-sequencing simulator runs a composed simulation using building blocks. This way, the simulation-for-learning is structured similarly to a multi-step simulation-for-execution. To compose both learning and execution scenarios, a unified trainable-and-composable description of blocks called a concept model is proposed and used. Using the simulator design and concept models, a reusable simulator for learning different tasks, a common-ground system for learning-to-execution, simulation-to-real is achieved and shown.
@article{arxiv.2301.01382,
title = {Task-sequencing Simulator: Integrated Machine Learning to Execution Simulation for Robot Manipulation},
author = {Kazuhiro Sasabuchi and Daichi Saito and Atsushi Kanehira and Naoki Wake and Jun Takamatsu and Katsushi Ikeuchi},
journal= {arXiv preprint arXiv:2301.01382},
year = {2023}
}