Saved in:
Bibliographic Details
Main Authors: Levin, Michal, Klein, Itzik
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.13071
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866915622294650880
author Levin, Michal
Klein, Itzik
author_facet Levin, Michal
Klein, Itzik
contents Low-cost micro-electromechanical accelerometers are widely used in navigation, robotics, and consumer devices for motion sensing and position estimation. However, their performance is often degraded by bias errors. To eliminate deterministic bias terms a calibration procedure is applied under stationary conditions. It requires accelerom- eter leveling or complex orientation-dependent calibration procedures. To overcome those requirements, in this paper we present a model-free learning-based calibration method that estimates accelerometer bias under stationary conditions, without requiring knowledge of the sensor orientation and without the need to rotate the sensors. The proposed approach provides a fast, practical, and scalable solution suitable for rapid field deployment. Experimental validation on a 13.39-hour dataset collected from six accelerometers shows that the proposed method consistently achieves error levels more than 52% lower than traditional techniques. On a broader scale, this work contributes to the advancement of accurate calibration methods in orientation-free scenarios. As a consequence, it improves the reliability of low-cost inertial sensors in diverse scientific and industrial applications and eliminates the need for leveled calibration.
format Preprint
id arxiv_https___arxiv_org_abs_2511_13071
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Orientation-Free Neural Network-Based Bias Estimation for Low-Cost Stationary Accelerometers
Levin, Michal
Klein, Itzik
Robotics
Machine Learning
Low-cost micro-electromechanical accelerometers are widely used in navigation, robotics, and consumer devices for motion sensing and position estimation. However, their performance is often degraded by bias errors. To eliminate deterministic bias terms a calibration procedure is applied under stationary conditions. It requires accelerom- eter leveling or complex orientation-dependent calibration procedures. To overcome those requirements, in this paper we present a model-free learning-based calibration method that estimates accelerometer bias under stationary conditions, without requiring knowledge of the sensor orientation and without the need to rotate the sensors. The proposed approach provides a fast, practical, and scalable solution suitable for rapid field deployment. Experimental validation on a 13.39-hour dataset collected from six accelerometers shows that the proposed method consistently achieves error levels more than 52% lower than traditional techniques. On a broader scale, this work contributes to the advancement of accurate calibration methods in orientation-free scenarios. As a consequence, it improves the reliability of low-cost inertial sensors in diverse scientific and industrial applications and eliminates the need for leveled calibration.
title Orientation-Free Neural Network-Based Bias Estimation for Low-Cost Stationary Accelerometers
topic Robotics
Machine Learning
url https://arxiv.org/abs/2511.13071