Visual Model-Based Reinforcement Learning (MBRL) promises to encapsulate agent's knowledge about the underlying dynamics of the environment, enabling learning a world model as a useful planner. However, top MBRL agents such as Dreamer often struggle with visual pixel-based inputs in the presence of exogenous or irrelevant noise in the observation space, due to failure to capture task-specific features while filtering out irrelevant spatio-temporal details. To tackle this problem, we apply a spatio-temporal masking strategy, a bisimulation principle, combined with latent reconstruction, to capture endogenous task-specific aspects of the environment for world models, effectively eliminating non-essential information. Joint training of representations, dynamics, and policy often leads to instabilities. To further address this issue, we develop a Hybrid Recurrent State-Space Model (HRSSM) structure, enhancing state representation robustness for effective policy learning. Our empirical evaluation demonstrates significant performance improvements over existing methods in a range of visually complex control tasks such as Maniskill \cite{gu2023maniskill2} with exogenous distractors from the Matterport environment. Our code is avaliable at https://github.com/bit1029public/HRSSM.
Learning Latent Dynamic Robust Representations for World Models
A new MBRL approach using spatio-temporal masking, bisimulation, latent reconstruction, and a Hybrid Recurrent State-Space Model (HRSSM) improves performance in visually complex control tasks with exogenous distractions.
- Year
- 2024
- Venue
- arXiv 2024
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- 4
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2405.06263v2ARXIV-DEFAULT
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