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arxiv:2205.01791

TartanDrive: A Large-Scale Dataset for Learning Off-Road Dynamics Models

Published on May 3, 2022
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Abstract

TartanDrive, a large-scale multi-modal off-road driving dataset, enhances model-based reinforcement learning performance in challenging terrains.

AI-generated summary

We present TartanDrive, a large scale dataset for learning dynamics models for off-road driving. We collected a dataset of roughly 200,000 off-road driving interactions on a modified Yamaha Viking ATV with seven unique sensing modalities in diverse terrains. To the authors' knowledge, this is the largest real-world multi-modal off-road driving dataset, both in terms of number of interactions and sensing modalities. We also benchmark several state-of-the-art methods for model-based reinforcement learning from high-dimensional observations on this dataset. We find that extending these models to multi-modality leads to significant performance on off-road dynamics prediction, especially in more challenging terrains. We also identify some shortcomings with current neural network architectures for the off-road driving task. Our dataset is available at https://github.com/castacks/tartan_drive.

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