Learning multiobjective rough terrain traversability
- URL: http://arxiv.org/abs/2203.16354v1
- Date: Wed, 30 Mar 2022 14:31:43 GMT
- Title: Learning multiobjective rough terrain traversability
- Authors: Martin Servin, Erik Wallin, Folke Vesterlund, Viktor Wiberg, Johan
Holmgren, Henrik Persson
- Abstract summary: We present a method that uses high-resolution topography data of rough terrain, and ground vehicle simulation, to predict traversability.
A deep neural network is trained to predict the traversability measures from the local heightmap and target speed.
We evaluate the model on laser-scanned forest terrains, previously unseen by the model.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We present a method that uses high-resolution topography data of rough
terrain, and ground vehicle simulation, to predict traversability.
Traversability is expressed as three independent measures: the ability to
traverse the terrain at a target speed, energy consumption, and acceleration.
The measures are continuous and reflect different objectives for planning that
go beyond binary classification. A deep neural network is trained to predict
the traversability measures from the local heightmap and target speed. To
produce training data, we use an articulated vehicle with wheeled bogie
suspensions and procedurally generated terrains. We evaluate the model on
laser-scanned forest terrains, previously unseen by the model. The model
predicts traversability with an accuracy of 90%. Predictions rely on features
from the high-dimensional terrain data that surpass local roughness and slope
relative to the heading. Correlations show that the three traversability
measures are complementary to each other. With an inference speed 3000 times
faster than the ground truth simulation and trivially parallelizable, the model
is well suited for traversability analysis and optimal path planning over large
areas.
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