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Published 2007 | Accepted Version + Published
Book Section - Chapter Open

Fast Terrain Classification Using Variable-Length Representation for Autonomous Navigation

Abstract

We propose a method for learning using a set of feature representations which retrieve different amounts of information at different costs. The goal is to create a more efficient terrain classification algorithm which can be used in real-time, onboard an autonomous vehicle. Instead of building a monolithic classifier with uniformly complex representation for each class, the main idea here is to actively consider the labels or misclassification cost while constructing the classifier. For example, some terrain classes might be easily separable from the rest, so very simple representation will be sufficient to learn and detect these classes. This is taken advantage of during learning, so the algorithm automatically builds a variable-length visual representation which varies according to the complexity of the classification task. This enables fast recognition of different terrain types during testing. We also show how to select a set of feature representations so that the desired terrain classification task is accomplished with high accuracy and is at the same time efficient. The proposed approach achieves a good trade-off between recognition performance and speedup on data collected by an autonomous robot.

Additional Information

© 2007 IEEE. This research was carried out by the Jet Propulsion Laboratory, California Institute of Technology with funding from the NASA's Mars Technology Program. We thank Max Bajracharya and the anonymous reviewers for providing very useful comments on the paper.

Attached Files

Published - 04270049.pdf

Accepted Version - AngelovaCVPR07_TerrainRec.pdf

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August 19, 2023
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October 24, 2023