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On Pre-Training for Visuo-Motor Control: Revisiting a Learning-from-Scratch Baseline

Data augmentation and shallow ConvNets are surprisingly competitive with pre-trained models for visuo-motor control tasks, highlighting significant domain gaps and emphasizing the importance of fine-tuning.

Year
2022
Venue
arXiv 2022
Authors
8
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arxiv.org/abs/2212.05749v2ARXIV-DEFAULT
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Abstract

In this paper, we examine the effectiveness of pre-training for visuo-motor control tasks. We revisit a simple Learning-from-Scratch (LfS) baseline that incorporates data augmentation and a shallow ConvNet, and find that this baseline is surprisingly competitive with recent approaches (PVR, MVP, R3M) that leverage frozen visual representations trained on large-scale vision datasets -- across a variety of algorithms, task domains, and metrics in simulation and on a real robot. Our results demonstrate that these methods are hindered by a significant domain gap between the pre-training datasets and current benchmarks for visuo-motor control, which is alleviated by finetuning. Based on our findings, we provide recommendations for future research in pre-training for control and hope that our simple yet strong baseline will aid in accurately benchmarking progress in this area.

Authors

8