学习评估图像标题

Yin Cui, Guandao Yang, Andreas Veit, Xun Huang, Serge J. Belongie
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引用次数: 113

摘要

图像字幕的评价指标面临两个挑战。首先,常用的指标如CIDEr、METEOR、ROUGE和BLEU往往与人类的判断不太相关。其次,每个指标都存在病态标题构建的盲点,而基于规则的指标一旦发现盲点,就缺乏修复这些盲点的规定。例如,新提出的SPICE可以很好地与人类判断相关联,但无法捕捉句子的句法结构。为了解决这两个挑战,我们提出了一种新的基于学习的判别评估指标,该指标可以直接训练来区分人类和机器生成的字幕。此外,我们进一步提出了一种数据增强方案,明确地将病态转化作为训练中的负例。用三种鲁棒性检验及其与人类判断的相关性来评价所提出的度量。大量的实验表明,所提出的数据增强方案不仅使我们的指标对几种病理转换更具鲁棒性,而且还提高了其与人类判断的相关性。我们的指标在Flickr 8k中的标题级人类相关性和COCO中的系统级人类相关性上都优于其他指标。所提出的方法可以作为一种基于学习的评估度量,补充现有的基于规则的度量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning to Evaluate Image Captioning
Evaluation metrics for image captioning face two challenges. Firstly, commonly used metrics such as CIDEr, METEOR, ROUGE and BLEU often do not correlate well with human judgments. Secondly, each metric has well known blind spots to pathological caption constructions, and rule-based metrics lack provisions to repair such blind spots once identified. For example, the newly proposed SPICE correlates well with human judgments, but fails to capture the syntactic structure of a sentence. To address these two challenges, we propose a novel learning based discriminative evaluation metric that is directly trained to distinguish between human and machine-generated captions. In addition, we further propose a data augmentation scheme to explicitly incorporate pathological transformations as negative examples during training. The proposed metric is evaluated with three kinds of robustness tests and its correlation with human judgments. Extensive experiments show that the proposed data augmentation scheme not only makes our metric more robust toward several pathological transformations, but also improves its correlation with human judgments. Our metric outperforms other metrics on both caption level human correlation in Flickr 8k and system level human correlation in COCO. The proposed approach could be served as a learning based evaluation metric that is complementary to existing rule-based metrics.
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