correlated noises
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2021 ◽  
pp. 4757-4768
Author(s):  
Weihao Song ◽  
Yuhua Qi ◽  
Jianan Wang ◽  
Xiaoxu Wang ◽  
Jiayuan Shan

Sensors ◽  
2021 ◽  
Vol 21 (17) ◽  
pp. 5729
Author(s):  
Rosa Fernández-Alcalá ◽  
Jesús Navarro-Moreno ◽  
Juan Ruiz-Molina

The centralized fusion estimation problem for discrete-time vectorial tessarine signals in multiple sensor stochastic systems with random one-step delays and correlated noises is analyzed under different T-properness conditions. Based on Tk, k=1,2, linear processing, new centralized fusion filtering, prediction, and fixed-point smoothing algorithms are devised. These algorithms have the advantage of providing optimal estimators with a significant reduction in computational cost compared to that obtained through a real or a widely linear processing approach. Simulation examples illustrate the effectiveness and applicability of the algorithms proposed, in which the superiority of the Tk linear estimators over their counterparts in the quaternion domain is apparent.


Author(s):  
Rosa M. Fernández-Alcalá ◽  
Jesús Navarro-Moreno ◽  
Juan C. Ruiz-Molina

The centralized fusion estimation problem for discrete-time vectorial tessarine signals in multiple sensor stochastic systems with random one-step delays and correlated noises is analyzed under different T-properness conditions. Based on Tk, k=1,2, linear processing, new centralized fusion filtering, prediction, and fixed-point smoothing algorithms are devised. These algorithms have the advantage of providing optimal estimators with a significant reduction in computational cost compared to that obtained through a real or widely linear processing approach. Simulation examples illustrate the effectiveness and applicability of the algorithms proposed, in which the superiority of the Tk linear estimators over their counterparts in the quaternion domain is apparent.


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