Gianmarco Roggiolani
Ph.D. student Contact:Email: gianmarco.roggiolani@nulligg.uni-bonn.de
Tel: +49 – 228 – 73 – 29 05
Fax: +49 – 228 – 73 – 27 12
Office: Nussallee 15, 1. OG, room 1.003
Address:
University of Bonn
Photogrammetry, IGG
Nussallee 15
53115 Bonn
Research Interests
- Computer Vision
- Self-Supervised Learning
- SLAM
- Agricultural Robotics
Short CV
Gianmarco Roggiolani is a PhD student at the University of Bonn. He received a Bachelor’s degree in Computer and Automatic Engineering (2018) and a Master’s degree in Artificial Intelligence and Robotics (2021) from La Sapienza University in Rome, Italy. His thesis was focused on the integration of the IMU sensor into a SLAM pipeline.
Projects
- PhenoRob – Robotics and Phenotyping for Sustainable Crop Production (DFG Cluster of Excellence)
Teaching
- Sensors and State Estimation – Winter Semester 2021
- Advanced Techniques for Sensors and State Estimation – Summer Semester 2022
- Master Project “Self-Supervised Contrastive Learning in Traffic Scenes” – Winter Semester 2022
- MSc Thesis “Multi-Modal Fine-Grained Pre-Training for Autonomous Driving” – Summer Semester 2023
- MSc Thesis “Geometry-Aware Self-Supervised Leaf Instance Segmentation in 3D” – Winter Semester 2023
- MSc Thesis “The Effect of Noisy Labels as Data Augmentation” – Winter Semester 2023
Publications
2024
- J. Weyler, F. Magistri, E. Marks, Y. L. Chong, M. Sodano, G. Roggiolani, N. Chebrolu, C. Stachniss, and J. Behley, “PhenoBench: A Large Dataset and Benchmarks for Semantic Image Interpretation in the Agricultural Domain,” Ieee trans. on pattern analysis and machine intelligence (tpami), 2024. doi:10.1109/TPAMI.2024.3419548
[BibTeX] [PDF] [Code]@article{weyler2024tpami, author = {J. Weyler and F. Magistri and E. Marks and Y.L. Chong and M. Sodano and G. Roggiolani and N. Chebrolu and C. Stachniss and J. Behley}, title = {{PhenoBench: A Large Dataset and Benchmarks for Semantic Image Interpretation in the Agricultural Domain}}, journal = tpami, year = {2024}, volume = {}, number = {}, pages = {}, doi = {10.1109/TPAMI.2024.3419548}, codeurl = {https://github.com/PRBonn/phenobench}, }
2023
- G. Roggiolani, F. Magistri, T. Guadagnino, J. Behley, and C. Stachniss, “Unsupervised Pre-Training for 3D Leaf Instance Segmentation,” IEEE Robotics and Automation Letters (RA-L), vol. 8, pp. 7448-7455, 2023. doi:10.1109/LRA.2023.3320018
[BibTeX] [PDF] [Code] [Video]@article{roggiolani2023ral, author = {G. Roggiolani and F. Magistri and T. Guadagnino and J. Behley and C. Stachniss}, title = {{Unsupervised Pre-Training for 3D Leaf Instance Segmentation}}, journal = ral, year = {2023}, volume = {8}, issue = {11}, codeurl = {https://github.com/PRBonn/Unsupervised-Pre-Training-for-3D-Leaf-Instance-Segmentation}, pages = {7448-7455}, doi = {10.1109/LRA.2023.3320018}, issn = {2377-3766}, videourl = {https://youtu.be/PbYVPPwVeKg}, }
- J. Weyler, F. Magistri, E. Marks, Y. L. Chong, M. Sodano, G. Roggiolani, N. Chebrolu, C. Stachniss, and J. Behley, “PhenoBench –- A Large Dataset and Benchmarks for Semantic Image Interpretation in the Agricultural Domain,” Arxiv preprint, vol. arXiv:2306.04557, 2023.
[BibTeX] [PDF] [Code]@article{weyler2023arxiv, author = {Jan Weyler and Federico Magistri and Elias Marks and Yue Linn Chong and Matteo Sodano and Gianmarco Roggiolani and Nived Chebrolu and Cyrill Stachniss and Jens Behley}, title = {{PhenoBench --- A Large Dataset and Benchmarks for Semantic Image Interpretation in the Agricultural Domain}}, journal = {arXiv preprint}, volume = {arXiv:2306.04557}, year = {2023}, codeurl = {https://github.com/PRBonn/phenobench} }
- G. Roggiolani, M. Sodano, F. Magistri, T. Guadagnino, J. Behley, and C. Stachniss, “Hierarchical Approach for Joint Semantic, Plant Instance, and Leaf Instance Segmentation in the Agricultural Domain,” in Proc. of the IEEE Intl. Conf. on Robotics & Automation (ICRA), 2023.
[BibTeX] [PDF] [Code] [Video]@inproceedings{roggiolani2023icra-hajs, author = {G. Roggiolani and M. Sodano and F. Magistri and T. Guadagnino and J. Behley and C. Stachniss}, title = {{Hierarchical Approach for Joint Semantic, Plant Instance, and Leaf Instance Segmentation in the Agricultural Domain}}, booktitle = icra, year = {2023}, codeurl = {https://github.com/PRBonn/HAPT}, videourl = {https://youtu.be/miuOJjxlJic} }
- G. Roggiolani, F. Magistri, T. Guadagnino, J. Weyler, G. Grisetti, C. Stachniss, and J. Behley, “On Domain-Specific Pre-Training for Effective Semantic Perception in Agricultural Robotics,” in Proc. of the IEEE Intl. Conf. on Robotics & Automation (ICRA), 2023.
[BibTeX] [PDF] [Code] [Video]@inproceedings{roggiolani2023icra-odsp, author = {G. Roggiolani and F. Magistri and T. Guadagnino and J. Weyler and G. Grisetti and C. Stachniss and J. Behley}, title = {{On Domain-Specific Pre-Training for Effective Semantic Perception in Agricultural Robotics}}, booktitle = icra, year = 2023, codeurl= {https://github.com/PRBonn/agri-pretraining}, videourl = {https://youtu.be/FDWY_UnfsBs} }