论文标题
比较和重量:使用类似图像集的独特图像字幕
Compare and Reweight: Distinctive Image Captioning Using Similar Images Sets
论文作者
论文摘要
已经开发了广泛的图像字幕模型,基于BLEU,苹果酒和香料等流行指标,取得了重大改进。但是,尽管生成的字幕可以准确地描述图像,但它们是相似图像的通用,并且缺乏独特性,即无法正确描述每个图像的独特性。在本文中,我们旨在通过使用一组相似图像的训练来提高图像标题的独特性。首先,我们提出了一个独特的度量标准 - 集合苹果酒(Ciderbtw),以评估标题相对于相似图像的标题的独特性。我们的指标表明,每个图像的人类注释基于独特性并非等效。因此,我们提出了几种新的培训策略,以鼓励每个图像生成的标题的独特性,这些标题是基于在加权损失功能中使用ciderbtw或作为加强学习奖励的。最后,进行了广泛的实验,表明我们提出的方法可显着提高独特性(通过ciderbtw和检索指标衡量)和精度(例如,通过苹果酒测量)对于多种图像字幕底座。通过用户研究进一步证实了这些结果。
A wide range of image captioning models has been developed, achieving significant improvement based on popular metrics, such as BLEU, CIDEr, and SPICE. However, although the generated captions can accurately describe the image, they are generic for similar images and lack distinctiveness, i.e., cannot properly describe the uniqueness of each image. In this paper, we aim to improve the distinctiveness of image captions through training with sets of similar images. First, we propose a distinctiveness metric -- between-set CIDEr (CIDErBtw) to evaluate the distinctiveness of a caption with respect to those of similar images. Our metric shows that the human annotations of each image are not equivalent based on distinctiveness. Thus we propose several new training strategies to encourage the distinctiveness of the generated caption for each image, which are based on using CIDErBtw in a weighted loss function or as a reinforcement learning reward. Finally, extensive experiments are conducted, showing that our proposed approach significantly improves both distinctiveness (as measured by CIDErBtw and retrieval metrics) and accuracy (e.g., as measured by CIDEr) for a wide variety of image captioning baselines. These results are further confirmed through a user study.