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Sean Segal
Sean Segal
PhD Student at University of Toronto, Research Scientist at Waabi
Verified email at cs.toronto.edu - Homepage
Title
Cited by
Cited by
Year
End-to-end contextual perception and prediction with interaction transformer
LL Li, B Yang, M Liang, W Zeng, M Ren, S Segal, R Urtasun
2020 IEEE/RSJ International Conference on Intelligent Robots and Systems …, 2020
1612020
Discrete residual flow for probabilistic pedestrian behavior prediction
A Jain, S Casas, R Liao, Y Xiong, S Feng, S Segal, R Urtasun
Conference on Robot Learning, 407-419, 2020
932020
Probabilistic prediction of dynamic object behavior for autonomous vehicles
A Jain, S Casas, R Liao, Y Xiong, S Feng, S Segal, R Urtasun
US Patent 11,521,396, 2022
282022
Systems and methods for generating motion forecast data for a plurality of actors with respect to an autonomous vehicle
LY Li, B Yang, W Zeng, M Liang, M Ren, S Segal, R Urtasun
US Patent 11,780,472, 2023
242023
End-toend contextual perception and prediction with interaction transformer. In 2020 IEEE
LL Li, B Yang, M Liang, W Zeng, M Ren, S Segal, R Urtasun
RSJ International Conference on Intelligent Robots and Systems (IROS), 5784-5791, 2020
182020
Systems and methods for generating motion forecast data for a plurality of actors with respect to an autonomous vehicle
LY Li, B Yang, M Liang, W Zeng, M Ren, S Segal, R Urtasun
US Patent 11,691,650, 2023
172023
Diverse complexity measures for dataset curation in self-driving
A Sadat, S Segal, S Casas, J Tu, B Yang, R Urtasun, E Yumer
2021 IEEE/RSJ International Conference on Intelligent Robots and Systems …, 2021
172021
Universal embeddings for spatio-temporal tagging of self-driving logs
S Segal, E Kee, W Luo, A Sadat, E Yumer, R Urtasun
Conference on Robot Learning, 973-983, 2021
112021
Labelformer: Object trajectory refinement for offboard perception from lidar point clouds
AJ Yang, S Casas, N Dvornik, S Segal, Y Xiong, JSK Hu, C Fang, ...
Conference on Robot Learning, 3364-3383, 2023
102023
Just label what you need: Fine-grained active selection for p&p through partially labeled scenes
S Segal, N Kumar, S Casas, W Zeng, M Ren, J Wang, R Urtasun
Conference on Robot Learning, 816-826, 2022
72022
Systems and methods for answering region specific questions
S Segal, W Luo, ER Kee, E Yumer, R Urtasun, A Sadat
US Patent 11,620,838, 2023
62023
Just label what you need: fine-grained active selection for perception and prediction through partially labeled scenes
S Segal, N Kumar, S Casas, W Zeng, M Ren, J Wang, R Urtasun
arXiv preprint arXiv:2104.03956, 2021
52021
Automatic labeling of objects from lidar point clouds via trajectory-level refinement
AJ Yang, SC ROMERO, M DVORNIK, S Segal, R Urtasun
US Patent App. 18/736,522, 2024
12024
Systems and Methods for Generating Motion Forecast Data for a Plurality of Actors with Respect to an Autonomous Vehicle
LY Li, B Yang, W Zeng, M Liang, M Ren, S Segal, RU Sotil
US Patent App. 18/240,771, 2024
2024
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