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RepoIMULocation: https://github.com/agnieszkaszczesna/RepoIMU Is the first dataset that comes to mind. It has full 9-dof recordings at 100 Hz, synchronized to their ground truths as quaternions. One of the files of this dataset was actually used for initial tests of Pros:
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I personally would use this dataset to understand the angular motion, and test drift after angular integration. |
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Attitude Estimation with Smartphones
This dataset is focused on smartphones, and their recordings are obtained from their embedded IMUs. Three smartphones with different sensor models are used:
Eight typical motions are recorded:
Pros:
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OxIOD: The Dataset for Deep Inertial OdometryLocation: http://deepio.cs.ox.ac.uk/ This dataset is delivered with smartphone's IMU, Vicon and Google Tango phone (Visual-inertial SLAM). It was created to train their neural network. Various phone positions and usages:
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Berlin Robust Orientation Estimation Assessment Dataset (BROAD)
The dataset includes 3D inertial and magnetic data with synchronized optical marker-based ground truth measurement. It consists of 39 trials at different speeds and various types of movement. Thereof, 23 trials are performed in an undisturbed indoor environment, and 16 trials are recorded with deliberate magnetometer and accelerometer disturbances.
Data in each file is:
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A great number of datasets can be found online, and I'm permanently looking for good ones. I'd recommend to use the ones including:
Some may lack the data of one of the sensors. Some others might have even more data than you expect (like videos or images for visual dometry.)
Check if you can use them to test your applications. Here I will post some of the ones I've found useful, their pros and cons. Maybe you can get some nice results with them.
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