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Tristan Gomez

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Enhancing Post-Hoc Explanation Benchmark Reliability for Image Classification

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Nov 29, 2023
Tristan Gomez, Harold Mouchère

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Comparison of attention models and post-hoc explanation methods for embryo stage identification: a case study

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May 13, 2022
Tristan Gomez, Thomas Fréour, Harold Mouchère

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Towards deep learning-powered IVF: A large public benchmark for morphokinetic parameter prediction

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Mar 01, 2022
Tristan Gomez, Magalie Feyeux, Nicolas Normand, Laurent David, Perrine Paul-Gilloteaux, Thomas Fréour, Harold Mouchère

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Metrics for saliency map evaluation of deep learning explanation methods

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Jan 31, 2022
Tristan Gomez, Thomas Fréour, Harold Mouchère

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Improve the Interpretability of Attention: A Fast, Accurate, and Interpretable High-Resolution Attention Model

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Jun 07, 2021
Tristan Gomez, Suiyi Ling, Thomas Fréour, Harold Mouchère

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