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📄 Abstract
Abstract: Generative Behavior Cloning (GBC) is a simple yet effective framework for
robot learning, particularly in multi-task settings. Recent GBC methods often
employ diffusion policies with open-loop (OL) control, where actions are
generated via a diffusion process and executed in multi-step chunks without
replanning. While this approach has demonstrated strong success rates and
generalization, its inherent stochasticity can result in erroneous action
sampling, occasionally leading to unexpected task failures. Moreover, OL
control suffers from delayed responses, which can degrade performance in noisy
or dynamic environments. To address these limitations, we propose two novel
techniques to enhance the consistency and reactivity of diffusion policies: (1)
self-guidance, which improves action fidelity by leveraging past observations
and implicitly promoting future-aware behavior; and (2) adaptive chunking,
which selectively updates action sequences when the benefits of reactivity
outweigh the need for temporal consistency. Extensive experiments show that our
approach substantially improves GBC performance across a wide range of
simulated and real-world robotic manipulation tasks. Our code is available at
https://github.com/junhyukso/SGAC
Key Contributions
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