Photo-realistic single image super-resolution using a generative adversarial network C Ledig, L Theis, F Huszár, J Caballero, A Cunningham, A Acosta, ... Computer Vision and Pattern Recognition, 2017 | 12905 | 2017 |
A note on the evaluation of generative models L Theis, A van den Oord, M Bethge International Conference on Learning Representations, 2016 | 1278 | 2016 |
Lossy Image Compression with Compressive Autoencoders L Theis, W Shi, A Cunningham, F Huszár International Conference on Learning Representations, 2017 | 1194* | 2017 |
HoloGAN: Unsupervised learning of 3D representations from natural images T Nguyen-Phuoc, C Li, L Theis, C Richardt, YL Yang Proceedings of the IEEE International Conference on Computer Vision, 7588-7597, 2019 | 539 | 2019 |
Amortised MAP inference for image super-resolution CK Sønderby, J Caballero, L Theis, W Shi, F Huszár International Conference on Learning Representations, 2016 | 516 | 2016 |
Deep gaze I: Boosting saliency prediction with feature maps trained on imagenet M Kümmerer, L Theis, M Bethge arXiv preprint arXiv:1411.1045, 2014 | 503 | 2014 |
Fast face-swap using convolutional neural networks I Korshunova, W Shi, J Dambre, L Theis Proceedings of the IEEE international conference on computer vision, 3677-3685, 2017 | 471 | 2017 |
Generative image modeling using spatial LSTMs L Theis, M Bethge Advances in Neural Information Processing Systems 28, 2015 | 228 | 2015 |
Faster gaze prediction with dense networks and Fisher pruning L Theis, I Korshunova, A Tejani, F Huszár arXiv preprint arXiv:1801.05787, 2018 | 224 | 2018 |
Benchmarking spike rate inference in population calcium imaging L Theis, P Berens, E Froudarakis, J Reimer, MR Rosón, T Baden, T Euler, ... Neuron 90 (3), 471-482, 2016 | 222 | 2016 |
Checkerboard artifact free sub-pixel convolution: A note on sub-pixel convolution, resize convolution and convolution resize A Aitken, C Ledig, L Theis, J Caballero, Z Wang, W Shi arXiv preprint arXiv:1707.02937, 2017 | 189 | 2017 |
Is the deconvolution layer the same as a convolutional layer? W Shi, J Caballero, L Theis, F Huszar, A Aitken, C Ledig, Z Wang arXiv preprint arXiv:1609.07009, 2016 | 182 | 2016 |
Super-resolution using a generative adversarial network W Shi, C Ledig, Z Wang, L Theis, F Huszar US Patent App. 15/706,428, 2018 | 151 | 2018 |
Community-based benchmarking improves spike rate inference from two-photon calcium imaging data P Berens, J Freeman, T Deneux, N Chenkov, T McColgan, A Speiser, ... PLoS computational biology 14 (5), e1006157, 2018 | 128 | 2018 |
Training end-to-end video processes Z Wang, RD Bishop, F Huszar, L Theis US Patent 10,666,962, 2020 | 104 | 2020 |
Universally Quantized Neural Compression E Agustsson, L Theis Advances in Neural Information Processing Systems, 2020 | 73 | 2020 |
An introduction to neural data compression Y Yang, S Mandt, L Theis Foundations and Trends® in Computer Graphics and Vision 15 (2), 113-200, 2023 | 72 | 2023 |
Photo-realistic single image super-resolution using a generative adversarial network. arXiv 2016 C Ledig, L Theis, F Huszar, J Caballero, A Cunningham, A Acosta, ... arXiv preprint arXiv:1609.04802, 2016 | 68 | 2016 |
Addressing delayed feedback for continuous training with neural networks in CTR prediction SI Ktena, A Tejani, L Theis, PK Myana, D Dilipkumar, F Huszár, S Yoo, ... Proceedings of the 13th ACM conference on recommender systems, 187-195, 2019 | 59 | 2019 |
Lossy compression with Gaussian diffusion L Theis, T Salimans, MD Hoffman, F Mentzer arXiv preprint arXiv:2206.08889, 2022 | 54 | 2022 |