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GenVQA

Empirical analysis on Generative Visual Question Answering. We implemented different methods of solvin VQA in a generative approach, including RNNs, Attent-Based RNNs, and Transformers. You can find information about the paper, accepted and presented at the EMNLP 2022: https://www.winlp.org/wp-content/uploads/2022/11/73_Paper.pdf

Important Note: Feel free to contact me if you think we can make any progress throughout this project!

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Empirical analysis of Generative Visual Question Answering approach.

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