Bi-Directional Domain Adaptation for Sim2Real Transfer of Embodied Navigation Agents
- Year
- 2021
- Citations
- 59
Abstract
Deep reinforcement learning models are notoriously data hungry, yet real-world data is expensive and time consuming to obtain. The solution that many have turned to is to use simulation for training before deploying the robot in a real environment. Simulation offers the ability to train large numbers of robots in parallel, and offers an abundance of data. However, no simulation is perfect, and robots trained solely in simulation fail to generalize to the real-world, resulting in a “sim-vs-real gap”. How can we overcome the trade-off between the abundance of less accurate, artificial data from simulators and the scarcity of reliable, real-world data? In this letter, we propose Bi-directional Domain Adaptation (BDA), a novel approach to bridge the sim-vs-real gap in both directions- real2sim to bridge the visual domain gap, and sim2real to bridge the dynamics domain gap. We demonstrate the benefits of BDA on the task of PointGoal Navigation. BDA with only 5 k real-world (state, action, next-state) samples matches the performance of a policy fine-tuned with ~ 600 k samples, resulting in a speed-up of ~ 120×.
Keywords
Related papers
Artificial intelligence: a modern approach
1995
A new optimizer using particle swarm theory
R.C. Eberhart, James Kennedy
2002
Self-Organizing Maps
Teuvo Kohonen
1995
Vision meets robotics: The KITTI dataset
Andreas Geiger, Philip Lenz, Christoph Stiller +1 more
2013