Complex Terrain Navigation via Model Error Prediction
- URL: http://arxiv.org/abs/2111.09768v1
- Date: Thu, 18 Nov 2021 15:55:04 GMT
- Title: Complex Terrain Navigation via Model Error Prediction
- Authors: Adam Polevoy, Craig Knuth, Katie M. Popek, Kapil D. Katyal
- Abstract summary: We train with an on-policy approach, resulting in successful navigation policies using as little as 50 minutes of training data split across simulation and real world.
Our learning-based navigation system is a sample efficient short-term planner that we demonstrate on a Clearpath Husky navigating through a variety of terrain.
- Score: 5.937673383513695
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Robot navigation traditionally relies on building an explicit map that is
used to plan collision-free trajectories to a desired target. In deformable,
complex terrain, using geometric-based approaches can fail to find a path due
to mischaracterizing deformable objects as rigid and impassable. Instead, we
learn to predict an estimate of traversability of terrain regions and to prefer
regions that are easier to navigate (e.g., short grass over small shrubs).
Rather than predicting collisions, we instead regress on realized error
compared to a canonical dynamics model. We train with an on-policy approach,
resulting in successful navigation policies using as little as 50 minutes of
training data split across simulation and real world. Our learning-based
navigation system is a sample efficient short-term planner that we demonstrate
on a Clearpath Husky navigating through a variety of terrain including
grassland and forest
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