CVPR2024
Task-Conditioned Adaptation of Visual Features in Multi-Task Policy Learning
Pierre Marza, Laëtitia Matignon, Olivier Simonin, Christian Wolf
被引用 3 次
摘要
Successfully addressing a wide variety of tasks is a core ability of autonomous agents, requiring flexibly adapting the underlying decision-making strategies and, as we ar-gue in this work, also adapting the perception modules. An analogical argument would be the human visual system, which uses top-down signals to focus attention determined by the current task. Similarly, we adapt pretrained large vision models conditioned on specific downstream tasks in the context of multitask policy learning. We introduce task-conditioned adapters that do not require finetuning any pretrained weights, combined with a single policy trained with behavior cloning and capable of addressing multiple tasks. We condition the visual adapters on task embeddings, which can be selected at inference if the task is known, or alternatively inferred from a set of example demonstrations. To this end, we propose a new optimization-based estimator. We evaluate the method on a wide variety of tasks from the CortexBench benchmark and show that, compared to existing work, it can be addressed with a single policy. In particular, we demonstrate that adapting visual features is a key design choice and that the method generalizes to unseen tasks given a few demonstrations.