What could go wrong? Introspective radar odometry in challenging environments
This paper is about detecting failures under uncertainty and improving the reliability of radar-only motion estimation. We use weak supervision together with inertial measurement fusion to train a classifier that exploits the principal eigenvector associated with our radar scan matching algorithm at...
Main Authors: | Aldera, R, De Martini, D, Gadd, M, Newman, P |
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Format: | Conference item |
Published: |
IEEE
2019
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