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Main Authors: Ferreira, Patrick, Costa, Paula
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.09539
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author Ferreira, Patrick
Costa, Paula
author_facet Ferreira, Patrick
Costa, Paula
contents We present IF-D, a large-scale inertial dataset designed to enable self-supervised and foundational learning for IMU time series. IF-D comprises continuous, long-duration multichannel recordings (accelerometer, gyroscope, magnetometer) sampled at 200Hz using a UM7 IMU mounted inside a 3D-printed spherical enclosure that promotes diverse, free rotations during vehicle traversal. The collection spans approximately 135 minutes of recording, yielding around 1.6 million samples across nine sensor channels. We describe the data acquisition setup, preprocessing, and calibration procedures (six-orientation accelerometer calibration, stationary gyroscope bias estimation, and ellipsoid fitting for magnetometer hard-/soft-iron correction), and provide quantitative calibration results. IF-D is designed to mitigate platform specific motion bias and expose models to both physical dynamics and typical measurement noise, thereby facilitating robust representation learning and downstream tasks such as event detection, motion mode recognition, and inertial navigation.
format Preprint
id arxiv_https___arxiv_org_abs_2510_09539
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle IF-D: A High-Frequency, General-Purpose Inertial Foundation Dataset for Self-Supervised Learning
Ferreira, Patrick
Costa, Paula
Signal Processing
68T05, 94A12
I.2.6; I.5.4; I.4.8
We present IF-D, a large-scale inertial dataset designed to enable self-supervised and foundational learning for IMU time series. IF-D comprises continuous, long-duration multichannel recordings (accelerometer, gyroscope, magnetometer) sampled at 200Hz using a UM7 IMU mounted inside a 3D-printed spherical enclosure that promotes diverse, free rotations during vehicle traversal. The collection spans approximately 135 minutes of recording, yielding around 1.6 million samples across nine sensor channels. We describe the data acquisition setup, preprocessing, and calibration procedures (six-orientation accelerometer calibration, stationary gyroscope bias estimation, and ellipsoid fitting for magnetometer hard-/soft-iron correction), and provide quantitative calibration results. IF-D is designed to mitigate platform specific motion bias and expose models to both physical dynamics and typical measurement noise, thereby facilitating robust representation learning and downstream tasks such as event detection, motion mode recognition, and inertial navigation.
title IF-D: A High-Frequency, General-Purpose Inertial Foundation Dataset for Self-Supervised Learning
topic Signal Processing
68T05, 94A12
I.2.6; I.5.4; I.4.8
url https://arxiv.org/abs/2510.09539