Signal #133588POSITIVE

Physics-Regularized Machine Learning for Proprioceptive Vehicle Localization Using Onboard Sensors

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arXiv:2607.05663v1 Announce Type: new Abstract: Accurate and robust localization is essential for autonomous mobility systems in real-world environments. While fusing Inertial Measurement Unit (IMU) data with satellite-based correction signals provides precise vehicle pose estimates, performance degrades substantially during outages. Recent studies indicate that Machine Learning (ML) can improve IMU-based proprioceptive localization, highlighting untapped potential for onboard sensors readily available in production vehicles. This paper introduces Physics-Regularized Machine Learning for Localization (PRML2), a hybrid framework that combines the complementary strengths of Kalman filtering and data-driven learning to estimate vehicle pose directly from onboard sensors. A key aspect of PRML2 is its physics-regularized learning, enabled by end-to-end training of an ML model through a differentiable Kalman filter. This improves consistency with vehicle motion models, thereby enhancing both...

arXiv Robotics1 day ago
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Physics-Regularized Machine Learning for Proprioceptive Vehicle Localization Using Onboard Sensors | Steek AI Signal | Steek