Lecture

Bayesian Disturbance Injection: Robust Imitation

Description

This lecture by the instructor focuses on Bayesian disturbance injection for robust imitation in robot learning. The presentation covers the development of sample-efficient reinforcement learning algorithms for real-world applications, the challenges of trial-and-error learning in industrial settings, and the application of imitation learning in complex environments. The lecture introduces the Bayesian Disturbance Injection (BDI) approach, which integrates probabilistic policy modeling, disturbance injection, and disturbance-level adjustment to improve policy robustness. Experimental results on tasks like table-sweeping and goal-reaching with obstacles demonstrate the effectiveness of BDI in reducing error compounding and achieving high task achievement. The lecture concludes with a discussion on Task Achievement Weighted Disturbance Injection (TAW-DI) to address limitations in imitation learning.

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