TY - JOUR
T1 - Artificial Intelligence-Aided Kalman Filters
T2 - AI-Augmented Designs for Kalman-Type Algorithms
AU - Shlezinger, Nir
AU - Revach, Guy
AU - Ghosh, Anubhab
AU - Chatterjee, Saikat
AU - Tang, Shuo
AU - Imbiriba, Tales
AU - Dunik, Jindrich
AU - Straka, Ondrej
AU - Closas, Pau
AU - Eldar, Yonina C.
N1 - Publisher Copyright:
© 1991-2012 IEEE.
PY - 2025/1/1
Y1 - 2025/1/1
N2 - The Kalman filter (KF) and its variants are among the most celebrated algorithms in signal processing. These methods are used for state estimation of dynamic systems by relying on mathematical representations in the form of simple state-space (SS) models, which may be crude and inaccurate descriptions of the underlying dynamics. Emerging data-centric artificial intelligence (AI) techniques tackle these tasks using deep neural networks (DNNs), which are model-agnostic. Recent developments illustrate the possibility of fusing DNNs with classic Kalman-type filtering, obtaining systems that learn to track in partially known dynamics. This article provides a tutorial-style overview of design approaches for incorporating AI in aiding KF-type algorithms. We review both generic and dedicated DNN architectures suitable for state estimation and provide a systematic presentation of techniques for fusing AI tools with KFs and for leveraging partial SS modeling and data, categorizing design approaches into task-oriented and SS model-oriented. The usefulness of each approach in preserving the individual strengths of model-based KFs and data-driven DNNs is investigated in a qualitative and quantitative study (whose code is publicly available), illustrating the gains of hybrid model-based/data-driven designs. We also discuss existing challenges and future research directions that arise from fusing AI and Kalman-type algorithms.
AB - The Kalman filter (KF) and its variants are among the most celebrated algorithms in signal processing. These methods are used for state estimation of dynamic systems by relying on mathematical representations in the form of simple state-space (SS) models, which may be crude and inaccurate descriptions of the underlying dynamics. Emerging data-centric artificial intelligence (AI) techniques tackle these tasks using deep neural networks (DNNs), which are model-agnostic. Recent developments illustrate the possibility of fusing DNNs with classic Kalman-type filtering, obtaining systems that learn to track in partially known dynamics. This article provides a tutorial-style overview of design approaches for incorporating AI in aiding KF-type algorithms. We review both generic and dedicated DNN architectures suitable for state estimation and provide a systematic presentation of techniques for fusing AI tools with KFs and for leveraging partial SS modeling and data, categorizing design approaches into task-oriented and SS model-oriented. The usefulness of each approach in preserving the individual strengths of model-based KFs and data-driven DNNs is investigated in a qualitative and quantitative study (whose code is publicly available), illustrating the gains of hybrid model-based/data-driven designs. We also discuss existing challenges and future research directions that arise from fusing AI and Kalman-type algorithms.
UR - http://www.scopus.com/inward/record.url?scp=105006853874&partnerID=8YFLogxK
U2 - 10.1109/MSP.2025.3569395
DO - 10.1109/MSP.2025.3569395
M3 - Article
AN - SCOPUS:105006853874
SN - 1053-5888
JO - IEEE Signal Processing Magazine
JF - IEEE Signal Processing Magazine
M1 - 0b00006493fd6fa5
ER -