Kernel-predicting convolutional networks for denoising Monte Carlo renderings. S Bako, T Vogels, B McWilliams, M Meyer, J Novák, A Harvill, P Sen, ... ACM Trans. Graph. 36 (4), 97:1-97:14, 2017 | 316 | 2017 |
Neural importance sampling T Müller, B McWilliams, F Rousselle, M Gross, J Novák ACM Transactions on Graphics (ToG) 38 (5), 1-19, 2019 | 310 | 2019 |
Recent advances in adaptive sampling and reconstruction for Monte Carlo rendering M Zwicker, W Jarosz, J Lehtinen, B Moon, R Ramamoorthi, F Rousselle, ... Computer graphics forum 34 (2), 667-681, 2015 | 206 | 2015 |
Denoising with kernel prediction and asymmetric loss functions T Vogels, F Rousselle, B McWilliams, G Röthlin, A Harvill, D Adler, ... ACM Transactions on Graphics (TOG) 37 (4), 1-15, 2018 | 177 | 2018 |
Adaptive rendering with non-local means filtering F Rousselle, C Knaus, M Zwicker ACM Transactions on Graphics (TOG) 31 (6), 1-11, 2012 | 150 | 2012 |
Adaptive sampling and reconstruction using greedy error minimization F Rousselle, C Knaus, M Zwicker ACM Transactions on Graphics (TOG) 30 (6), 1-12, 2011 | 143 | 2011 |
Robust denoising using feature and color information F Rousselle, M Manzi, M Zwicker Computer Graphics Forum 32 (7), 121-130, 2013 | 115 | 2013 |
Nonlinearly weighted first‐order regression for denoising Monte Carlo renderings B Bitterli, F Rousselle, B Moon, JA Iglesias‐Guitián, D Adler, K Mitchell, ... Computer Graphics Forum 35 (4), 107-117, 2016 | 111 | 2016 |
Real-time neural radiance caching for path tracing T Müller, F Rousselle, J Novák, A Keller arXiv preprint arXiv:2106.12372, 2021 | 94 | 2021 |
Recent advances in facial appearance capture O Klehm, F Rousselle, M Papas, D Bradley, C Hery, B Bickel, W Jarosz, ... Computer Graphics Forum 34 (2), 709-733, 2015 | 67 | 2015 |
Denoising Monte Carlo renderings using machine learning with importance sampling T Vogels, F Rousselle, B McWilliams, M Meyer, J Novak US Patent 10,572,979, 2020 | 66 | 2020 |
Path‐space motion estimation and decomposition for robust animation filtering H Zimmer, F Rousselle, W Jakob, O Wang, D Adler, W Jarosz, ... Computer Graphics Forum 34 (4), 131-142, 2015 | 59 | 2015 |
Neural control variates T Müller, F Rousselle, A Keller, J Novák ACM Transactions on Graphics (TOG) 39 (6), 1-19, 2020 | 49 | 2020 |
Kernel-predicting convolutional neural networks for denoising T Vogels, J Novák, F Rousselle, B McWilliams US Patent 10,475,165, 2019 | 49 | 2019 |
NeRF‐Tex: Neural Reflectance Field Textures H Baatz, J Granskog, M Papas, F Rousselle, J Novák Computer graphics forum 41 (6), 287-301, 2022 | 40 | 2022 |
Denoising monte carlo renderings using progressive neural networks T Vogels, F Rousselle, B McWilliams, M Meyer, J Novak US Patent 10,607,319, 2020 | 38 | 2020 |
Image-space control variates for rendering F Rousselle, W Jarosz, J Novák ACM Transactions on Graphics (TOG) 35 (6), 1-12, 2016 | 33 | 2016 |
Denoising Monte Carlo renderings using generative adversarial neural networks T Vogels, F Rousselle, B McWilliams, M Meyer, J Novak US Patent 10,586,310, 2020 | 27 | 2020 |
Improved sampling for gradient-domain metropolis light transport M Manzi, F Rousselle, M Kettunen, J Lehtinen, M Zwicker ACM Transactions on Graphics (TOG) 33 (6), 1-12, 2014 | 26 | 2014 |
Denoising Monte Carlo renderings using neural networks with asymmetric loss T Vogels, F Rousselle, J Novak, B McWilliams, M Meyer, A Harvill US Patent 10,699,382, 2020 | 23 | 2020 |