CVMar 9, 2023

Toward Unsupervised Realistic Visual Question Answering

arXiv:2303.05068v13 citationsh-index: 83
Originality Incremental advance
AI Analysis

This work addresses the problem of making VQA models more robust in real-world scenarios by handling unanswerable questions, though it is incremental in improving existing methods.

The paper tackles realistic visual question answering (RVQA) by addressing dataset limitations and high annotation costs, proposing a new testing dataset with 29K human-annotated unanswerable questions and an unsupervised training approach that outperforms baselines.

The problem of realistic VQA (RVQA), where a model has to reject unanswerable questions (UQs) and answer answerable ones (AQs), is studied. We first point out 2 drawbacks in current RVQA research, where (1) datasets contain too many unchallenging UQs and (2) a large number of annotated UQs are required for training. To resolve the first drawback, we propose a new testing dataset, RGQA, which combines AQs from an existing VQA dataset with around 29K human-annotated UQs. These UQs consist of both fine-grained and coarse-grained image-question pairs generated with 2 approaches: CLIP-based and Perturbation-based. To address the second drawback, we introduce an unsupervised training approach. This combines pseudo UQs obtained by randomly pairing images and questions, with an RoI Mixup procedure to generate more fine-grained pseudo UQs, and model ensembling to regularize model confidence. Experiments show that using pseudo UQs significantly outperforms RVQA baselines. RoI Mixup and model ensembling further increase the gain. Finally, human evaluation reveals a performance gap between humans and models, showing that more RVQA research is needed.

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