Ego-Foresight: Self-supervised Learning of Agent-Aware Representations for Improved RL
Ego-Foresight: Self-supervised Learning of Agent-Aware Representations for Improved RL
Despite the significant advancements in Deep Reinforcement Learning (RL) observed in the last decade, the amount of training experience necessary to learn effective policies remains one of the primary concerns both in simulated and real environments. Looking to solve this issue, previous work has shown that improved training efficiency can be achieved by separately modeling agent and environment, but usually requiring a supervisory agent mask. In contrast to RL, humans can perfect a new skill from a small number of trials and in most cases do so without a supervisory signal, making neuroscientific studies of human development a valuable source of inspiration for RL. In particular, we explore the idea of motor prediction, which states that humans develop an internal model of themselves and of the consequences that their motor commands have on the immediate sensory inputs. Our insight is that the movement of the agent provides a cue that allows the duality between agent and environment to be learned. To instantiate this idea, we present Ego-Foresight, a self-supervised method for disentangling agent and environment based on motion and prediction. Our main finding is self-supervised agent-awareness by visuomotor prediction of the agent improves sample-efficiency and performance of the underlying RL algorithm. To test our approach, we first study its ability to visually predict agent movement irrespective of the environment, in simulated and real-world robotic data. Then, we integrate Ego-Foresight with a model-free RL algorithm to solve simulated robotic tasks, showing that self-supervised agent-awareness can improve sample-efficiency and performance in RL.
Manuel Serra Nunes、Atabak Dehban、Yiannis Demiris、José Santos-Victor
自动化基础理论计算技术、计算机技术
Manuel Serra Nunes,Atabak Dehban,Yiannis Demiris,José Santos-Victor.Ego-Foresight: Self-supervised Learning of Agent-Aware Representations for Improved RL[EB/OL].(2025-06-30)[2025-07-16].https://arxiv.org/abs/2407.01570.点此复制
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