Conditional Measurement Density Estimation in Sequential Monte Carlo via
Normalizing Flow
- URL: http://arxiv.org/abs/2203.08617v1
- Date: Wed, 16 Mar 2022 13:35:16 GMT
- Title: Conditional Measurement Density Estimation in Sequential Monte Carlo via
Normalizing Flow
- Authors: Xiongjie Chen, Yunpeng Li
- Abstract summary: We propose to learn expressive and valid probability densities in measurement models through conditional normalizing flows.
We show that the proposed approach leads to improved estimation performance and faster training convergence in a visual tracking experiment.
- Score: 12.161649672131286
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Tuning of measurement models is challenging in real-world applications of
sequential Monte Carlo methods. Recent advances in differentiable particle
filters have led to various efforts to learn measurement models through neural
networks. But existing approaches in the differentiable particle filter
framework do not admit valid probability densities in constructing measurement
models, leading to incorrect quantification of the measurement uncertainty
given state information. We propose to learn expressive and valid probability
densities in measurement models through conditional normalizing flows, to
capture the complex likelihood of measurements given states. We show that the
proposed approach leads to improved estimation performance and faster training
convergence in a visual tracking experiment.
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