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Unsupervised Keyword Extraction for Full-Sentence VQA

机译:全句VQA的无监督关键字提取

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In the majority of the existing Visual Question Answering (VQA) research, the answers consist of short, often single words, as per instructions given to the annotators during dataset construction. This study envisions a VQA task for natural situations, where the answers are more likely to be sentences rather than single words. To bridge the gap between this natural VQA and existing VQA approaches, a novel unsupervised keyword extraction method is proposed. The method is based on the principle that the full-sentence answers can be decomposed into two parts: one that contains new information answering the question (i.e., keywords), and one that contains information already included in the question. Discriminative decoders were designed to achieve such decomposition, and the method was experimentally implemented on VQA datasets containing full-sentence answers. The results show that the proposed model can accurately extract the keywords without being given explicit annotations describing them.
机译:在大多数现有的视觉问题的回答(VQA)研究中,答案由短期,通常单词包括在数据集建设期间给予注释器的指示。本研究设想了自然情况的VQA任务,其中答案更可能是句子而不是单词。为了弥合这种自然VQA和现有VQA方法之间的差距,提出了一种新的无监督关键字提取方法。该方法基于完整句子答案可以分解为两部分的原则:其中包含接听问题的新信息(即,关键字),以及包含已包含在问题中的信息的新信息。鉴别的解码器被设计为实现这种分解,并且该方法在实验上在包含全句子答案的VQA数据集上实现。结果表明,该建议的模型可以准确提取关键字而不获得描述它们的显式注释。

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