Learning to See before Learning to Act: Visual Pre-training for Manipulation
This work addresses sample efficiency in robotic manipulation, offering a method to reduce training time, though it is incremental in applying transfer learning to this domain.
The paper tackles the problem of whether visual pre-training improves learning for vision-based manipulation tasks, finding that it significantly enhances generalization and sample efficiency, achieving about 80% success rate in picking up novel objects with minimal robotic experience.
Does having visual priors (e.g. the ability to detect objects) facilitate learning to perform vision-based manipulation (e.g. picking up objects)? We study this problem under the framework of transfer learning, where the model is first trained on a passive vision task, and adapted to perform an active manipulation task. We find that pre-training on vision tasks significantly improves generalization and sample efficiency for learning to manipulate objects. However, realizing these gains requires careful selection of which parts of the model to transfer. Our key insight is that outputs of standard vision models highly correlate with affordance maps commonly used in manipulation. Therefore, we explore directly transferring model parameters from vision networks to affordance prediction networks, and show that this can result in successful zero-shot adaptation, where a robot can pick up certain objects with zero robotic experience. With just a small amount of robotic experience, we can further fine-tune the affordance model to achieve better results. With just 10 minutes of suction experience or 1 hour of grasping experience, our method achieves ~80% success rate at picking up novel objects.