Deep molecular dreaming: Inverse machine learning for de-novo molecular design and interpretability with surjective representations C Shen, M Krenn, S Eppel, A Aspuru-Guzik Machine Learning: Science and Technology 2 (3), 03LT02, 2021 | 53 | 2021 |
Computer vision for recognition of materials and vessels in chemistry lab settings and the vector-labpics data set S Eppel, H Xu, M Bismuth, A Aspuru-Guzik ACS central science 6 (10), 1743-1752, 2020 | 42 | 2020 |
Setting an attention region for convolutional neural networks using region selective features, for recognition of materials within glass vessels S Eppel arXiv preprint arXiv:1708.08711, 2017 | 41 | 2017 |
Statistical survey of hydrogen-bond motifs in crystallographic special symmetry positions, and the influence of chirality of molecules in the crystal on the formation of … S Eppel, J Bernstein Acta Crystallographica Section B: Structural Science 64 (1), 50-56, 2008 | 40 | 2008 |
Computer vision-based recognition of liquid surfaces and phase boundaries in transparent vessels, with emphasis on chemistry applications S Eppel, T Kachman arXiv preprint arXiv:1404.7174, 2014 | 37 | 2014 |
Computer vision-based recognition of liquid surfaces and phase boundaries in transparent vessels, with emphasis on chemistry applications S Eppel, T Kachman arXiv preprint arXiv:1404.7174v6, 0 | 37* | |
Amide-templated iodoplumbates: extending lead-iodide based hybrid semiconductors S Eppel, N Fridman, G Frey Crystal Growth & Design 15 (9), 4363-4371, 2015 | 35 | 2015 |
Statistics-based design of multicomponent molecular crystals with the three-center hydrogen bond S Eppel, J Bernstein Crystal Growth and Design 9 (4), 1683-1691, 2009 | 31 | 2009 |
Seeing glass: joint point cloud and depth completion for transparent objects H Xu, YR Wang, S Eppel, A Aspuru-Guzik, F Shkurti, A Garg arXiv preprint arXiv:2110.00087, 2021 | 29 | 2021 |
Tracing liquid level and material boundaries in transparent vessels using the graph cut computer vision approach S Eppel arXiv preprint arXiv:1602.00177, 2016 | 21 | 2016 |
Classifying a specific image region using convolutional nets with an ROI mask as input S Eppel arXiv preprint arXiv:1812.00291, 2018 | 14 | 2018 |
One-pot esterification-click (CuAAC) and esterification–acetylene coupling (Glaser/Eglinton) for functionalization of Wang polystyrene resin S Eppel, M Portnoy Tetrahedron Letters 54 (37), 5056-5060, 2013 | 12 | 2013 |
Forecasting the future of artificial intelligence with machine learning-based link prediction in an exponentially growing knowledge network M Krenn, L Buffoni, B Coutinho, S Eppel, JG Foster, A Gritsevskiy, H Lee, ... Nature Machine Intelligence 5 (11), 1326-1335, 2023 | 10 | 2023 |
Hierarchical semantic segmentation using modular convolutional neural networks S Eppel arXiv preprint arXiv:1710.05126, 2017 | 10 | 2017 |
Tracing the boundaries of materials in transparent vessels using computer vision S Eppel arXiv preprint arXiv:1501.04691, 2015 | 9 | 2015 |
Predicting the Future of AI with AI: High-quality link prediction in an exponentially growing knowledge network M Krenn, L Buffoni, B Coutinho, S Eppel, JG Foster, A Gritsevskiy, H Lee, ... arXiv preprint arXiv:2210.00881, 2022 | 8 | 2022 |
Computer vision for liquid samples in hospitals and medical labs using hierarchical image segmentation and relations prediction S Eppel, H Xu, A Aspuru-Guzik arXiv preprint arXiv:2105.01456, 2021 | 7 | 2021 |
Using curvature to distinguish between surface reflections and vessel contents in computer vision based recognition of materials in transparent vessels S Eppel arXiv preprint arXiv:1506.00168, 2015 | 7 | 2015 |
Mvtrans: Multi-view perception of transparent objects YR Wang, Y Zhao, H Xu, S Eppel, A Aspuru-Guzik, F Shkurti, A Garg 2023 IEEE International Conference on Robotics and Automation (ICRA), 3771-3778, 2023 | 6 | 2023 |
Predicting 3D shapes, masks, and properties of materials inside transparent containers, using the TransProteus CGI dataset S Eppel, H Xu, YR Wang, A Aspuru-Guzik Digital Discovery 1 (1), 45-60, 2022 | 6 | 2022 |