Papers
arxiv:1609.06657

The Color of the Cat is Gray: 1 Million Full-Sentences Visual Question Answering (FSVQA)

Published on Sep 21, 2016
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Abstract

The FSVQA dataset introduces a new benchmark for visual question answering by providing full-sentence answers instead of brief responses, requiring more sophisticated language understanding and generation capabilities.

AI-generated summary

Visual Question Answering (VQA) task has showcased a new stage of interaction between language and vision, two of the most pivotal components of artificial intelligence. However, it has mostly focused on generating short and repetitive answers, mostly single words, which fall short of rich linguistic capabilities of humans. We introduce Full-Sentence Visual Question Answering (FSVQA) dataset, consisting of nearly 1 million pairs of questions and full-sentence answers for images, built by applying a number of rule-based natural language processing techniques to original VQA dataset and captions in the MS COCO dataset. This poses many additional complexities to conventional VQA task, and we provide a baseline for approaching and evaluating the task, on top of which we invite the research community to build further improvements.

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