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DCU System Report on the WMT 2017 Multi-modal Machine Translation Task

机译:关于WMT 2017多模式机器翻译任务的DCU系统报告

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We report experiments with multi-modal neural machine translation models that incorporate global visual features in different parts of the encoder and decoder, and use the VGG19 network to extract features for all images. In our experiments, we explore both different strategies to include global image features and also how ensembling different models at inference time impact translations. Our submissions ranked 3rd best for translating from English into French, always improving considerably over an neural machine translation baseline across all language pair evaluated, e.g. an increase of 7.0-9.2 METEOR points.
机译:我们报告了多模式神经机器翻译模型的实验,该模型在编码器和解码器的不同部分整合了全局视觉特征,并使用VGG19网络提取所有图像的特征。在我们的实验中,我们探索了包括全局图像特征在内的不同策略,以及在推理时整合不同模型如何影响翻译。从英语到法语的翻译中,我们提交的文件名列第三,在评估的所有语言对(例如,增加7.0-9.2流星点。

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