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DeepVL training dataset
Introduction
This dataset repository contains the training and testing datasets used in the paper: "DeepVL: Dynamics and Inertial Measurements-based Deep Velocity Learning for Underwater Odometry". The dataset was collected by manually pilotting an underwater robot in a pool and in the Trondhiem fjord.
Dataset details
The training data is located in the train_full
directory and the test data in test
directory respectively. The training data directory contains trajectories from traj1
to traj12
, and testing data contains from traj1
to traj2
. Each trajectory contains files described as follows:
trajX/
βββ alphasense_imu_data.npy # IMU data from Alphasense Sensense | rate: 200Hz
βββ biases_data.npy # Estimated IMU biases (from ReAqROVIO) | rate: 20Hz
βββ fcu_imu_data.npy # IMU data from flight control unit | rate: 200Hz
βββ gravity_b_vec.npy # Gravity vector in body frame | rate: 20Hz
βββ motor_commands_data.npy # Motor command PWM signals for all 8 thrusters | rate: 200Hz
βββ orientation_data_Rmat.npy # Orientation matrices (body to world) | rate: 20Hz
βββ supervision_odom_data.npy # Ground-truth odometry (from ReAqROVIO) | rate: 20Hz
βββ battery_data.npy # (Optional) Battery voltage and current | rate: 20Hz
Each file is in .npy
format and can be loaded and parsed using numpy. In each numpy file the data is organized as:
[data_column_1, data_column_2, ... data_column_N, time_stamp_column]
Contact
For questions or support, contact authors:
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