@inproceedings{17898,
  abstract     = {There is an ever-growing zoo of modern neural network models that can efficiently learn end-to-end control from visual observations. These advanced deep models, ranging from convolutional to Vision Transformers, from small to gigantic networks, have been extensively tested on offline image classification tasks. In this paper, we study these vision models with respect to the open-loop training to closed-loop generalization abilities, i.e., deployment realizes a causal feedback loop that is not present during training. This causality gap typically emerges in robotics applications such as autonomous driving, where a network is trained to imitate the control commands of a human. In this setting, two situations arise: 1) Closed-loop testing in-distribution, where the test environment shares properties with those of offline training data. 2) Closed-loop testing under distribution shifts and out-of-distribution. Contrary to recently reported results, we show that under proper training guidelines, all vision architectures perform indistinguishably well on in-distribution deployment, resolving the causality gap. In situation 2, We observe that scale is the strongest factor in improving closed-loop generalization regardless of the choice of the model architecture. Our results predict the trend that in the future we will see larger and larger models being used in offline-training-online-deployment imitation learning tasks in robotic applications.},
  author       = {Lechner, Mathias and Hasani, Ramin and Amini, Alexander and Wang, Tsun Hsuan and Henzinger, Thomas A and Rus, Daniela},
  booktitle    = {Proceedings of the 2024 IEEE International Conference on Robotics and Automation},
  isbn         = {9798350384574},
  issn         = {1050-4729},
  location     = {Yokohama, Japan},
  pages        = {2774--2782},
  publisher    = {Institute of Electrical and Electronics Engineers},
  title        = {{Overparametrization helps offline-to-online generalization of closed-loop control from pixels}},
  doi          = {10.1109/ICRA57147.2024.10610284},
  year         = {2024},
}

