{"id":626973,"date":"2019-12-11T17:58:56","date_gmt":"2019-12-12T01:58:56","guid":{"rendered":"https:\/\/www.microsoft.com\/en-us\/research\/?post_type=msr-research-item&p=626973"},"modified":"2021-02-15T14:09:50","modified_gmt":"2021-02-15T22:09:50","slug":"tiger-text-to-image-grounding-for-image-caption-evaluation","status":"publish","type":"msr-research-item","link":"https:\/\/www.microsoft.com\/en-us\/research\/publication\/tiger-text-to-image-grounding-for-image-caption-evaluation\/","title":{"rendered":"TIGEr: Text-to-Image Grounding for Image Caption Evaluation"},"content":{"rendered":"

This paper presents a new metric called TIGEr for the automatic evaluation of image captioning systems. Popular metrics, such as BLEU and CIDEr, are based solely on text matching between reference captions and machine-generated captions, potentially leading to biased evaluations because references may not fully cover the image content and natural language is inherently ambiguous. Building upon a machine-learned text-image grounding model, TIGEr allows to evaluate caption quality not only based on how well a caption represents image content, but also on how well machine-generated captions match human-generated captions. Our empirical tests show that TIGEr has a higher consistency with human judgments than alternative existing metrics. We also comprehensively assess the metric’s effectiveness in caption evaluation by measuring the correlation between human judgments and metric scores.<\/p>\n","protected":false},"excerpt":{"rendered":"

This paper presents a new metric called TIGEr for the automatic evaluation of image captioning systems. Popular metrics, such as BLEU and CIDEr, are based solely on text matching between reference captions and machine-generated captions, potentially leading to biased evaluations because references may not fully cover the image content and natural language is inherently ambiguous. 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