Adaptive Motion Generation Using Uncertainty-Driven Foresight Prediction
Hyogo Hiruma, Hiroshi Ito, and Tetusya Ogata

TL;DR
This paper presents an adaptive robot control method that uses uncertainty-driven foresight prediction to generate flexible motions in uncertain environments, demonstrated through a door opening task with multiple possible actions.
Contribution
It extends predictive learning-based control with a foresight module that samples futures to minimize uncertainty, enabling adaptive behavior in unstructured scenarios.
Findings
The model successfully adapted to different door opening methods.
It outperformed conventional methods in stability during adaptation.
Lyapunov analysis showed the model embeds uncertainty in its policy.
Abstract
Uncertainty of environments has long been a difficult characteristic to handle, when performing real-world robot tasks. This is because the uncertainty produces unexpected observations that cannot be covered by manual scripting. Learning based robot controlling methods are a promising approach for generating flexible motions against unknown situations, but still tend to suffer under uncertainty due to its deterministic nature. In order to adaptively perform the target task under such conditions, the robot control model must be able to accurately understand the possible uncertainty, and to exploratively derive the optimal action that minimizes such uncertainty. This paper extended an existing predictive learning based robot control method, which employ foresight prediction using dynamic internal simulation. The foresight module refines the model's hidden states by sampling multiple…
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Taxonomy
TopicsHuman Pose and Action Recognition · Human Motion and Animation · Time Series Analysis and Forecasting
