The content introduces the Multiple Update Particle Filter (MU-PF) for efficient position estimation using GNSS pseudorange and carrier phase observations. The MU-PF addresses challenges faced by traditional PFs when likelihood functions exhibit sharp peaks, ensuring accurate state estimation. Experimental results demonstrate superior convergence and accuracy compared to conventional methods.
The study highlights the importance of considering the spread of likelihood functions from multiple observations in particle filters. It introduces a systematic approach to updating particles based on distribution breadth, improving convergence speed and estimation accuracy. The proposed method outperforms existing techniques in urban environments, showcasing its effectiveness in real-world applications.
Evaluation through static and kinematic tests validates the efficacy of the proposed method over normal PF and annealed PF approaches. The MU-PF demonstrates rapid convergence with fewer particles, achieving centimeter-level accuracy even after a single observation step. In kinematic tests using real-world data, the proposed method outperforms conventional RTK-GNSS methods, emphasizing its practical utility for accurate position estimation.
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by Taro Suzuki о arxiv.org 03-07-2024
https://arxiv.org/pdf/2403.03394.pdfГлибші Запити