Multiple and Gyro-Free Inertial Datasets
CoRR(2024)
摘要
An inertial navigation system (INS) utilizes three orthogonal accelerometers
and gyroscopes to determine platform position, velocity, and orientation. There
are countless applications for INS, including robotics, autonomous platforms,
and the internet of things. Recent research explores the integration of
data-driven methods with INS, highlighting significant innovations, improving
accuracy and efficiency. Despite the growing interest in this field and the
availability of INS datasets, no datasets are available for gyro-free INS
(GFINS) and multiple inertial measurement unit (MIMU) architectures. To fill
this gap and to stimulate further research in this field, we designed and
recorded GFINS and MIMU datasets using 54 inertial sensors grouped in nine
inertial measurement units. These sensors can be used to define and evaluate
different types of MIMU and GFINS architectures. The inertial sensors were
arranged in three different sensor configurations and mounted on a mobile robot
and a passenger car. In total, the dataset contains 35 hours of inertial data
and corresponding ground truth trajectories. The data and code are freely
accessible through our GitHub repository.
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