A review of Bayes filters with machine learning techniques and their applications

Date published

2025-02-01

Free to read from

2024-11-26

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Publisher

Elsevier

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Article

ISSN

1566-2535

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Citation

Kim S, Petrunin I, Shin H-S. (2025) A review of Bayes filters with machine learning techniques and their applications. Information Fusion, Volume 114, February 2025, Article number 102707

Abstract

A Bayes filter is a widely used estimation algorithm, but it has inherent limitations. Performance can degrade when the dynamics are highly nonlinear or when the probability distribution of the state is unknown. To mitigate these issues, machine learning (ML) techniques have been incorporated into many Bayes filters, due to their advantage of being able to map between the input and the output without explicit instructions. In this review, we reviewed 90 papers that proposed the use of ML techniques with Bayes filters to improve estimation performance. This review provides an overview of Bayes filters with ML techniques, categorised according to the role of ML, remaining challenges and research gaps. In the concluding section of this review, we point out directions for future research.

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Github

Keywords

Bayes filter, Machine learning, Survey, Review, 4605 Data Management and Data Science, 46 Information and Computing Sciences, 4602 Artificial Intelligence, 4603 Computer Vision and Multimedia Computation, Machine Learning and Artificial Intelligence, Networking and Information Technology R&D (NITRD), Artificial Intelligence & Image Processing, 4602 Artificial intelligence, 4603 Computer vision and multimedia computation, 4605 Data management and data science

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Attribution-NonCommercial-NoDerivatives 4.0 International

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