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LiDAR-Based Pose Initialization Dataset for Spinning Spacecrafts

Luca BechisPolytechnic University of TurinJean-Luc SarvadonPolytechnic University of TurinPetre RicioppoPolytechnic University of TurinMauro ManciniPolytechnic University of Turin
Open MINDrepository2026
ABI

Abstract

This dataset contains fully synthetic LiDAR data generated from scratch and used in the article: Recurrent Convolutional Neural Networks for LiDAR-Based Pose Initialization of Spinning Spacecrafts Authors:Luca Bechis, Jean-Luc Sarvadon, Petre Ricioppo, Mauro ManciniDepartment of Mechanical and Aerospace Engineering, Politecnico di Torino, Italy Dataset Description The dataset is designed for LiDAR-based pose initialization and relative navigation of spinning spacecraft. It includes two main components:1) Image Dataset: image-based LiDAR representations used as inputs for convolutional neural networks.2) Sequence Dataset: temporal sequences of LiDAR scans used for recurrent neural network training. The dataset includes data generated for three spacecraft models:- Aquarius- Magellan- NEAR Shoemaker The data are fully synthetic and generated using a custom simulation pipeline. Citation If you use this dataset in your work, please cite both this dataset and the associated article. @article{Bechis2025RCNNLiDAR, title = {Recurrent Convolutional Neural Networks for LiDAR-Based Pose Initialization of Spinning Spacecrafts}, author = {Bechis, Luca and Sarvadon, Jean-Luc and Ricioppo, Petre and Mancini, Mauro}, journal = {IFAC World Congress}, year = {2025}, note = {Under review} Dataset Repository The dataset repository, including future releases of the dataset generation code, is available at:https://github.com/STREAMRobotics/rcnn-lidar-spinning-spacecraft-dataset

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