Learning to reweight examples for robust deep learning M Ren, W Zeng, B Yang, R Urtasun International Conference on Machine Learning, 4331-4340, 2018 | 1607 | 2018 |
Meta-learning for semi-supervised few-shot classification M Ren, E Triantafillou, S Ravi, J Snell, K Swersky, JB Tenenbaum, ... International Conference on Learning Representations, 2018 | 1565 | 2018 |
Exploring models and data for image question answering M Ren, R Kiros, R Zemel Advances in Neural Information Processing Systems 28, 2953-2961, 2015 | 1048* | 2015 |
The reversible residual network: Backpropagation without storing activations AN Gomez, M Ren, R Urtasun, RB Grosse Advances in Neural Information Processing Systems 30, 2211-2221, 2017 | 567 | 2017 |
End-to-end instance segmentation with recurrent attention M Ren, RS Zemel Proceedings of the IEEE Conference on Computer Vision and Pattern …, 2017 | 409 | 2017 |
Graph hypernetworks for neural architecture search C Zhang, M Ren, R Urtasun International Conference on Learning Representations, 2019 | 293 | 2019 |
SBNet: Sparse blocks network for fast inference M Ren, A Pokrovsky, B Yang, R Urtasun Proceedings of the IEEE Conference on Computer Vision and Pattern …, 2018 | 249 | 2018 |
Physically realizable adversarial examples for LiDAR object detection J Tu, M Ren, S Manivasagam, M Liang, B Yang, R Du, F Cheng, ... Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern …, 2020 | 218 | 2020 |
Incremental few-shot learning with attention attractor networks M Ren, R Liao, E Fetaya, RS Zemel Advances in Neural Information Processing Systems 32, 5275-5285, 2019 | 201 | 2019 |
Perceive, predict, and plan: Safe motion planning through interpretable semantic representations A Sadat, S Casas, M Ren, X Wu, P Dhawan, R Urtasun European Conference on Computer Vision, 414-430, 2020 | 181 | 2020 |
Understanding short-horizon bias in stochastic meta-optimization Y Wu, M Ren, R Liao, R Grosse International Conference on Learning Representations, 2018 | 138 | 2018 |
Advsim: Generating safety-critical scenarios for self-driving vehicles J Wang, A Pun, J Tu, S Manivasagam, A Sadat, S Casas, M Ren, ... Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern …, 2021 | 132 | 2021 |
End-to-end contextual perception and prediction with interaction transformer LL Li, B Yang, M Liang, W Zeng, M Ren, S Segal, R Urtasun IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), 2020 | 121 | 2020 |
Normalizing the normalizers: Comparing and extending network normalization schemes M Ren, R Liao, R Urtasun, FH Sinz, RS Zemel International Conference on Learning Representations, 2017 | 107 | 2017 |
Identifying unknown instances for autonomous driving K Wong, S Wang, M Ren, M Liang, R Urtasun Conference on Robot Learning, 384-393, 2020 | 105 | 2020 |
Jointly learnable behavior and trajectory planning for self-driving vehicles A Sadat, M Ren, A Pokrovsky, YC Lin, E Yumer, R Urtasun IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), 2019 | 93 | 2019 |
Scenegen: Learning to generate realistic traffic scenes S Tan, K Wong, S Wang, S Manivasagam, M Ren, R Urtasun Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern …, 2021 | 75 | 2021 |
Exploring adversarial robustness of multi-sensor perception systems in self driving J Tu, H Li, X Yan, M Ren, Y Chen, M Liang, E Bitar, E Yumer, R Urtasun arXiv preprint arXiv:2101.06784, 2021 | 73 | 2021 |
LoCo: Local contrastive representation learning Y Xiong, M Ren, R Urtasun Advances in Neural Information Processing Systems 33, 2020 | 64 | 2020 |
Sparse convolutional neural networks R Urtasun, M Ren, A Pokrovsky, B Yang US Patent 11,061,402, 2021 | 53 | 2021 |