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Right this way: Can VLMs Guide Us to See More to Answer Questions?

VLMs can be improved to indicate necessary adjustments for insufficient visual information, benefiting visually impaired users, through fine-tuning with synthetic data in VQA tasks.

Year
2024
Venue
arXiv 2024
Authors
7
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Abstract onlyARXIV-DEFAULT

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arxiv.org/abs/2411.00394ARXIV-DEFAULT
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Abstract

In question-answering scenarios, humans can assess whether the available information is sufficient and seek additional information if necessary, rather than providing a forced answer. In contrast, Vision Language Models (VLMs) typically generate direct, one-shot responses without evaluating the sufficiency of the information. To investigate this gap, we identify a critical and challenging task in the Visual Question Answering (VQA) scenario: can VLMs indicate how to adjust an image when the visual information is insufficient to answer a question? This capability is especially valuable for assisting visually impaired individuals who often need guidance to capture images correctly. To evaluate this capability of current VLMs, we introduce a human-labeled dataset as a benchmark for this task. Additionally, we present an automated framework that generates synthetic training data by simulating ``where to know'' scenarios. Our empirical results show significant performance improvements in mainstream VLMs when fine-tuned with this synthetic data. This study demonstrates the potential to narrow the gap between information assessment and acquisition in VLMs, bringing their performance closer to humans.

Authors

7