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Masked Visual Pre-training for Motor Control

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This paper shows that self-supervised visual pre-training from real-world images is effective for learning motor control tasks from pixels. We first train the visual representations by masked modeling of natural images. We then freeze the visual encoder and train neural network controllers on top with reinforcement learning. We do not perform any task-specific fine-tuning of the encoder; the same visual representations are used for all motor control tasks. To the best of our knowledge, this is the first self-supervised model to exploit real-world images at scale for motor control. To accelerate progress in learning from pixels, we contribute a benchmark suite of hand-designed tasks varying in movements, scenes, and robots. Without relying on labels, state-estimation, or expert demonstrations, we consistently outperform supervised encoders by up to 80% absolute success rate, sometimes even matching the oracle state performance. We also find that in-the-wild images, e.g., from YouTube or Egocentric videos, lead to better visual representations for various manipulation tasks than ImageNet images.

Tete Xiao, Ilija Radosavovic, Trevor Darrell, Jitendra Malik• 2022

Related benchmarks

TaskDatasetResultRank
Robotic ManipulationFranka-Kitchen
Avg Success Rate57.75
24
Visuomotor ControlLIBERO Goal
Success Rate88
13
Visuomotor ControlBlock Pushing
Avg Successes0.00e+0
13
Visuomotor ControlPush T
Success Rate20
12
Robotic ManipulationCOLOSSEUM
Avg SR160
7
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