データ駆動型サイエンス創造センターコンソーシアム

2022.1.20
セミナー情報

DSCトーク 202201

1月のDSCトークはロボットラーニング研究室の松原 崇充先生に研究を紹介していただきました。

タイトルと概要は以下になります。
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Associate Prof. Takamitsu Matsubara (Robot Learning Laboratory)

TITLE: Bayesian Disturbance Injection: Robust Imitation Learning of Flexible Policies

ABSTRACT:
In this talk, we discuss imitation learning problems for learning robot skills from human demonstration data. Scenarios requiring humans to choose from multiple seemingly optimal actions are commonplace, however standard imitation learning algorithms often fail to capture this behavior. Instead, an over-reliance on replicating expert actions induces inflexible and unstable policies, leading to poor generalizability in an application. To address these problems, we introduce our imitation learning framework that incorporates Bayesian variational inference for learning flexible non-parametric multi-action policies, while simultaneously robustifying the policies against sources of error, by introducing and optimizing disturbances into expert actions to create a richer demonstration dataset. This combinatorial approach forces the policy to adapt to challenging situations, enabling stable multi-action policies to be learned efficiently. The effectiveness of our proposed method is evaluated through simulations and real-robot experiments.