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FVQA 2.0: Introducing Adversarial Samples into Fact-based Visual Question Answering (2303.10699v1)
Published 19 Mar 2023 in cs.CL and cs.CV
Abstract: The widely used Fact-based Visual Question Answering (FVQA) dataset contains visually-grounded questions that require information retrieval using common sense knowledge graphs to answer. It has been observed that the original dataset is highly imbalanced and concentrated on a small portion of its associated knowledge graph. We introduce FVQA 2.0 which contains adversarial variants of test questions to address this imbalance. We show that systems trained with the original FVQA train sets can be vulnerable to adversarial samples and we demonstrate an augmentation scheme to reduce this vulnerability without human annotations.
- Weizhe Lin (23 papers)
- Zhilin Wang (38 papers)
- Bill Byrne (57 papers)