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Approximate Bayesian inference in spatial environments
by
Mirchev, Atanas
, Kayalibay, Baris
, Bayer, Justin
, Soelch, Maximilian
, van der Smagt, Patrick
in
Bayesian analysis
/ Laser range finders
/ Mapping
/ Neural networks
/ Statistical inference
2019
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Do you wish to request the book?
Approximate Bayesian inference in spatial environments
by
Mirchev, Atanas
, Kayalibay, Baris
, Bayer, Justin
, Soelch, Maximilian
, van der Smagt, Patrick
in
Bayesian analysis
/ Laser range finders
/ Mapping
/ Neural networks
/ Statistical inference
2019
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Paper
Approximate Bayesian inference in spatial environments
2019
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Overview
Model-based approaches bear great promise for decision making of agents interacting with the physical world. In the context of spatial environments, different types of problems such as localisation, mapping, navigation or autonomous exploration are typically adressed with specialised methods, often relying on detailed knowledge of the system at hand. We express these tasks as probabilistic inference and planning under the umbrella of deep sequential generative models. Using the frameworks of variational inference and neural networks, our method inherits favourable properties such as flexibility, scalability and the ability to learn from data. The method performs comparably to specialised state-of-the-art methodology in two distinct simulated environments.
Publisher
Cornell University Library, arXiv.org
Subject
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