An Inertial Sequence Learning Framework for Vehicle Speed Estimation via Smartphone IMU
An Inertial Sequence Learning Framework for Vehicle Speed Estimation via Smartphone IMU
Accurately estimating vehicle velocity via smartphone is critical for mobile navigation and transportation. This paper introduces a cutting-edge framework for velocity estimation that incorporates temporal learning models, utilizing Inertial Measurement Unit (IMU) data and is supervised by Global Navigation Satellite System (GNSS) information. The framework employs a noise compensation network to fit the noise distribution between sensor measurements and actual motion, and a pose estimation network to align the coordinate systems of the phone and the vehicle. To enhance the model's generalizability, a data augmentation technique that mimics various phone placements within the car is proposed. Moreover, a new loss function is designed to mitigate timestamp mismatches between GNSS and IMU signals, effectively aligning the signals and improving the velocity estimation accuracy. Finally, we implement a highly efficient prototype and conduct extensive experiments on a real-world crowdsourcing dataset, resulting in superior accuracy and efficiency.
Xuan Xiao、Xiaotong Ren、Haitao Li
综合运输
Xuan Xiao,Xiaotong Ren,Haitao Li.An Inertial Sequence Learning Framework for Vehicle Speed Estimation via Smartphone IMU[EB/OL].(2025-05-23)[2025-06-27].https://arxiv.org/abs/2505.18490.点此复制
评论