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Main Authors: Han, James R., Vanniasinghe, Mithun, Sahak, Hshmat, Rhinehart, Nicholas, Barfoot, Timothy D.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.17204
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author Han, James R.
Vanniasinghe, Mithun
Sahak, Hshmat
Rhinehart, Nicholas
Barfoot, Timothy D.
author_facet Han, James R.
Vanniasinghe, Mithun
Sahak, Hshmat
Rhinehart, Nicholas
Barfoot, Timothy D.
contents Scaling Reinforcement Learning to in-the-wild social robot navigation is both data-intensive and unsafe, since policies must learn through direct interaction and inevitably encounter collisions. Offline Imitation learning (IL) avoids these risks by collecting expert demonstrations safely, training entirely offline, and deploying policies zero-shot. However, we find that naively applying Behaviour Cloning (BC) to social navigation is insufficient; achieving strong performance requires careful architectural and training choices. We present Ratatouille, a pipeline and model architecture that, without changing the data, reduces collisions per meter by 6 times and improves success rate by 3 times compared to naive BC. We validate our approach in both simulation and the real world, where we collected over 11 hours of data on a dense university campus. We further demonstrate qualitative results in a public food court. Our findings highlight that thoughtful IL design, rather than additional data, can substantially improve safety and reliability in real-world social navigation. Video: https://youtu.be/tOdLTXsaYLQ. Code will be released after acceptance.
format Preprint
id arxiv_https___arxiv_org_abs_2509_17204
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Ratatouille: Imitation Learning Ingredients for Real-world Social Robot Navigation
Han, James R.
Vanniasinghe, Mithun
Sahak, Hshmat
Rhinehart, Nicholas
Barfoot, Timothy D.
Robotics
Scaling Reinforcement Learning to in-the-wild social robot navigation is both data-intensive and unsafe, since policies must learn through direct interaction and inevitably encounter collisions. Offline Imitation learning (IL) avoids these risks by collecting expert demonstrations safely, training entirely offline, and deploying policies zero-shot. However, we find that naively applying Behaviour Cloning (BC) to social navigation is insufficient; achieving strong performance requires careful architectural and training choices. We present Ratatouille, a pipeline and model architecture that, without changing the data, reduces collisions per meter by 6 times and improves success rate by 3 times compared to naive BC. We validate our approach in both simulation and the real world, where we collected over 11 hours of data on a dense university campus. We further demonstrate qualitative results in a public food court. Our findings highlight that thoughtful IL design, rather than additional data, can substantially improve safety and reliability in real-world social navigation. Video: https://youtu.be/tOdLTXsaYLQ. Code will be released after acceptance.
title Ratatouille: Imitation Learning Ingredients for Real-world Social Robot Navigation
topic Robotics
url https://arxiv.org/abs/2509.17204