AGCNet: Improving Inertial Odometry via IMU Accelerometer and Gyroscope Online Compensation

An optional description of the image for screen readers. By Caigui Jiang

Abstract

This paper presents a learning-based online IMU compensation method (AGCNet) that can compensate for runtime errors of the accelerometer and gyroscope to improve inertial odometry. AGCNet employs U-Net architecture with hybrid dilated convolutions to extract multiscale features. It alsoadopts skip connections and patch-based processing strategy to aggregate local and global information. The network is trained to minimize absolute errors between integration results derived from compensated IMU data and ground truth motion states. The network utilizes IMU measurements from the current time window to correct errors in the subsequent time window, enabling sparser computations. Experiments on two public visualinertial datasets show that AGCNet can accurately estimate the orientation from IMU measurements, outperforming existing learning-based methods. When applied to Open-VINS, AGCNet improves the accuracy of orientation estimation by an average of 29.8% and position estimation by an average of 37.3%.

Publication
IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)
Click the Cite button above to demo the feature to enable visitors to import publication metadata into their reference management software.
Click the Slides button above to demo Academic’s Markdown slides feature.

Supplementary notes can be added here, including code and math.

Hongyuan Min 闵鸿源
Hongyuan Min 闵鸿源
MSc Student

I am Hongyuan Min, a master’s student at Xi’an Jiaotong University. My research interests include artificial intelligence, and autonomous intelligent systems.

Caigui Jiang
Caigui Jiang
Professor

My research interests are in geometric modeling, geometry processing, architectural geometry, computer graphics, and computer vision.