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Re-evaluating Automatic Metrics for Image Captioning

机译:重新评估图像标题的自动度量

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摘要

The task of generating natural language descriptions from images has received a lot of attention in recent years. Consequently, it is becoming increasingly important to evaluate such image captioning approaches in an automatic manner. In this paper, we provide an in-depth evaluation of the existing image captioning metrics through a series of carefully designed experiments. Moreover, we explore the utilization of the recently proposed Word Mover's Distance (wmd) document metric for the purpose of image captioning. Our findings outline the differences and/or similarities between metrics and their relative robustness by means of extensive correlation, accuracy and distraction based evaluations. Our results also demonstrate that wmd provides strong advantages over other metrics.
机译:近年来,从图像产生自然语言描述的任务已经受到很多关注。因此,以自动方式评估这种图像标题方法越来越重要。在本文中,我们通过一系列精心设计的实验提供了对现有图像标题度量的深入评估。此外,我们探讨了最近提出的Word Mover距离(WMD)文档度量的利用,以实现图像标题的目的。我们的调查结果概述了指标之间的差异和/或相似性,通过广泛的相关性,准确性和分心性的评估。我们的结果还表明,WMD提供了与其他指标的强大优势。

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