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title abstract keywords layout series id month tex_title firstpage lastpage page order cycles bibtex_author author date address publisher container-title volume genre issued pdf extras
Particle Filter Networks with Application to Visual Localization
Particle filtering is a powerful approach to sequential state estimation and finds application in many domains, including robot localization, object tracking, etc. To apply particle filtering in practice, a critical challenge is to construct probabilistic system models, especially for systems with complex dynamics or rich sensory inputs such as camera images. This paper introduces the Particle Filter Network (PFnet), which encodes both a system model and a particle filter algorithm in a single neural network. The PF-net is fully differentiable and trained end-to-end from data. Instead of learning a generic system model, it learns a model optimized for the particle filter algorithm. We apply the PF-net to a visual localization task, in which a robot must localize in a rich 3-D world, using only a schematic 2-D floor map. In simulation experiments, PF-net consistently outperforms alternative learning architectures, as well as a traditional model-based method, under a variety of sensor inputs. Further, PF-net generalizes well to new, unseen environments.
sequential state estimation, particle filtering, deep neural network, end-to-end learning, visual localization
inproceedings
Proceedings of Machine Learning Research
karkus18a
0
Particle Filter Networks with Application to Visual Localization
169
178
169-178
169
false
Karkus, Peter and Hsu, David and Lee, Wee Sun
given family
Peter
Karkus
given family
David
Hsu
given family
Wee Sun
Lee
2018-10-23
PMLR
Proceedings of The 2nd Conference on Robot Learning
87
inproceedings
date-parts
2018
10
23
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