A comparison of classification techniques for seismic facies recognition T Zhao, V Jayaram, A Roy, KJ Marfurt Interpretation 3 (4), SAE29-SAE58, 2015 | 289 | 2015 |
Seismic facies classification using different deep convolutional neural networks T Zhao SEG International Exposition and Annual Meeting, SEG-2018-2997085, 2018 | 154 | 2018 |
A fault detection workflow using deep learning and image processing T Zhao, P Mukhopadhyay SEG International Exposition and Annual Meeting, SEG-2018-2997005, 2018 | 107 | 2018 |
Semisupervised multiattribute seismic facies analysis J Qi, T Lin, T Zhao, F Li, K Marfurt Interpretation 4 (1), SB91-SB106, 2016 | 96* | 2016 |
Characterizing a turbidite system in Canterbury Basin, New Zealand, using seismic attributes and distance-preserving self-organizing maps T Zhao, J Zhang, F Li, KJ Marfurt Interpretation 4 (1), SB79-SB89, 2016 | 84 | 2016 |
Constraining self-organizing map facies analysis with stratigraphy: An approach to increase the credibility in automatic seismic facies classification T Zhao, F Li, KJ Marfurt Interpretation 5 (2), T163-T171, 2017 | 67 | 2017 |
Seismic attribute selection for unsupervised seismic facies analysis using user-guided data-adaptive weights T Zhao, F Li, KJ Marfurt Geophysics 83 (2), O31-O44, 2018 | 59 | 2018 |
Estimation of total organic carbon and brittleness volume S Verma, T Zhao, KJ Marfurt, D Devegowda Interpretation 4 (3), T373-T385, 2016 | 56 | 2016 |
Brittleness evaluation of resource plays by integrating petrophysical and seismic data analysis B Zhang, T Zhao, X Jin, KJ Marfurt Interpretation 3 (2), T81-T92, 2015 | 55 | 2015 |
Lithofacies classification in Barnett Shale using proximal support vector machines T Zhao, V Jayaram, KJ Marfurt, H Zhou SEG International Exposition and Annual Meeting, SEG-2014-1210, 2014 | 50 | 2014 |
Seismic attenuation attributes with applications on conventional and unconventional reservoirs F Li, S Verma, H Zhou, T Zhao, KJ Marfurt Interpretation 4 (1), SB63-SB77, 2016 | 38* | 2016 |
Low-frequency data prediction with iterative learning for highly nonlinear inverse scattering problems Z Lin, R Guo, M Li, A Abubakar, T Zhao, F Yang, S Xu IEEE Transactions on Microwave Theory and Techniques 69 (10), 4366-4376, 2021 | 37 | 2021 |
TOC estimation in the Barnett Shale from triple combo logs using support vector machine T Zhao*, S Verma, D Devegowda, V Jayaram SEG Technical Program Expanded Abstracts 2015, 791-795, 2015 | 28 | 2015 |
Multispectral coherence: Which decomposition should we use? B Lyu, J Qi, F Li, Y Hu, T Zhao, S Verma, KJ Marfurt Interpretation 8 (1), T115-T129, 2020 | 24 | 2020 |
3D convolutional neural networks for efficient fault detection and orientation estimation T Zhao SEG International Exposition and Annual Meeting, D043S136R002, 2019 | 24 | 2019 |
Enrich the interpretation of seismic image segmentation by estimating epistemic uncertainty T Zhao, X Chen SEG Technical Program Expanded Abstracts 2020, 1444-1448, 2020 | 22 | 2020 |
Facies analysis by integrating 3D seismic attributes and well logs for prospect identification and evaluation—A case study from Northwest China X Wang, B Zhang, T Zhao, J Hang, H Wu, Z Yong Interpretation 5 (2), SE61-SE74, 2017 | 20 | 2017 |
Unconventional reservoir characterization based on spectrally corrected seismic attenuation estimation F Li, H Zhou, T Zhao, KJ Marfurt Journal of Seismic Exploration 25 (5), 447-461, 2016 | 18 | 2016 |
Supervised and unsupervised learning: How machines can assist quantitative seismic interpretation T Zhao, S Verma, J Qi, KJ Marfurt SEG International Exposition and Annual Meeting, SEG-2015-5924540, 2015 | 18 | 2015 |
Horizon-based semiautomated nonhyperbolic velocity analysis B Zhang, T Zhao, J Qi, KJ Marfurt Geophysics 79 (6), U15-U23, 2014 | 17 | 2014 |