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Leveraging Neural Caption Translation with Visually Grounded Paraphrase Augmentation

机译:利用视觉接地释义增强的神经标题翻译

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Since a concept can be represented by different vocabularies, styles, and levels of detail, a translation task resembles a many-to-many mapping task from a distribution of sentences in the source language into a distribution of sentences in the target language. This viewpoint, however, is not fully implemented in current neural machine translation (NMT), which is one-to-one sentence mapping. In this study, we represent the distribution itself as multiple paraphrase sentences, which will enrich the model context understanding and trigger it to produce numerous hypotheses. We use a visually grounded paraphrase (VGP), which uses images as a constraint of the concept in paraphrasing, to guarantee that the created paraphrases are within the intended distribution. In this way, our method can also be considered as incorporating image information into NMT without using the image itself. We implement this idea by crowdsourcing a paraphrasing corpus that realizes VGP and construct neural paraphrasing that behaves as expert models in a NMT. Our experimental results reveal that our proposed VGP augmentation strategies showed improvement against a vanilla NMT baseline.
机译:由于一个概念可以由不同的词汇表,样式和细节级别表示,因此翻译任务类似于来自源语言中的句子的分发到目标语言中的句子的分发中的多对多映射任务。然而,此观点在当前的神经计算机翻译(NMT)中没有完全实现,这是一对一的句子映射。在这项研究中,我们将分布本身代表为多个释义句子,这将丰富模型语境理解并触发它以产生许多假设。我们使用视觉接地的释义(VGP),它使用图像作为释义概念的约束,以保证创建的释义在预期的分布范围内。以这种方式,我们的方法也可以被认为是在不使用图像本身的情况下将图像信息纳入NMT。我们通过覆盖一个实现VGP的措辞来实现这个想法,并构建神经翻译的表现为NMT中的专家模型。我们的实验结果表明,我们提出的VGP增强策略表现出对Vanilla NMT基线的改善。

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