Abstract:
The growing interest in language-conditioned robot manipulation aims to develop robots capable of understanding and executing complex tasks, with the objective of enablin...Show MoreMetadata
Abstract:
The growing interest in language-conditioned robot manipulation aims to develop robots capable of understanding and executing complex tasks, with the objective of enabling robots to interpret language commands and manipulate objects accordingly. While language-conditioned approaches demonstrate impressive capabilities for addressing tasks in familiar environments, they encounter limitations in adapting to unfamiliar environment settings. In this letter, we propose a general-purpose, language-conditioned approach that combines base skill priors and imitation learning under unstructured data to enhance the algorithm's generalization in adapting to unfamiliar environments. We assess our model's performance in both simulated and real-world environments using a zero-shot setting. The average completed task length, indicating the average number of tasks the agent can continuously complete, improves more than 2.5 times compared to the baseline method HULC. In terms of the zero-shot evaluation of our policy in a real-world setting, we set up ten tasks and achieved an average 30% improvement in our approach compared to the current state-of-the-art approach, demonstrating a high generalization capability in both simulated environments and the real world.
Published in: IEEE Robotics and Automation Letters ( Volume: 9, Issue: 11, November 2024)
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- IEEE Keywords
- Index Terms
- Unstructured Data ,
- Imitation Learning ,
- Simulation Environment ,
- Environmental Settings ,
- Generalization Capability ,
- Real-world Environments ,
- Task Environment ,
- Unfamiliar Environment ,
- Generalization Ability ,
- Sequence Of Actions ,
- Language Teaching ,
- Latent Space ,
- Goal State ,
- Robotic Arm ,
- Current Observations ,
- Real-world Experiments ,
- Deep Reinforcement Learning ,
- Training Environment ,
- Behavior Of Agents ,
- Unseen Environments ,
- Policy Learning ,
- Bidirectional Long Short-term Memory Network ,
- Expert Demonstrations ,
- True Posterior ,
- Trained Agent ,
- Conditional Variational Autoencoder ,
- Ability Of Agents ,
- Learning Procedure ,
- Manipulation Tasks
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Unstructured Data ,
- Imitation Learning ,
- Simulation Environment ,
- Environmental Settings ,
- Generalization Capability ,
- Real-world Environments ,
- Task Environment ,
- Unfamiliar Environment ,
- Generalization Ability ,
- Sequence Of Actions ,
- Language Teaching ,
- Latent Space ,
- Goal State ,
- Robotic Arm ,
- Current Observations ,
- Real-world Experiments ,
- Deep Reinforcement Learning ,
- Training Environment ,
- Behavior Of Agents ,
- Unseen Environments ,
- Policy Learning ,
- Bidirectional Long Short-term Memory Network ,
- Expert Demonstrations ,
- True Posterior ,
- Trained Agent ,
- Conditional Variational Autoencoder ,
- Ability Of Agents ,
- Learning Procedure ,
- Manipulation Tasks
- Author Keywords