协同图像字幕的联合优化

Gilad Vered, Gal Oren, Y. Atzmon, Gal Chechik
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引用次数: 16

摘要

当使用自然语言描述图像时,如果针对下游任务进行了调整,则描述可以提供更多信息。这可以通过训练两个网络来实现:一个“说话者”根据图像生成句子,另一个“听者”使用图像执行任务。不幸的是,训练多个网络共同进行通信,面临两大挑战。首先,扬声器网络生成的描述是离散的和随机的,使得优化非常困难和低效。其次,联合训练通常会导致交流中使用的词汇与自然语言发生漂移和偏离。为了解决这些挑战,我们提出了一种有效的优化技术,该技术基于多项分布的部分抽样结合直通式梯度更新,我们将其命名为PSST (partial-sampling straight-through)。然后,我们展示了生成的描述可以通过约束它们与人类描述相似来保持接近自然。总之,这种方法创建的描述比以前的方法更有辨别力,也更自然。对COCO基准的评估表明,PSST将recall@10从60%提高到86%,保持了相当的语言自然度。人类的评估表明,它也增加了自然度,同时保持了生成的字幕的辨别力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Joint Optimization for Cooperative Image Captioning
When describing images with natural language, descriptions can be made more informative if tuned for downstream tasks. This can be achieved by training two networks: a "speaker" that generates sentences given an image and a "listener" that uses them to perform a task. Unfortunately, training multiple networks jointly to communicate, faces two major challenges. First, the descriptions generated by a speaker network are discrete and stochastic, making optimization very hard and inefficient. Second, joint training usually causes the vocabulary used during communication to drift and diverge from natural language. To address these challenges, we present an effective optimization technique based on partial-sampling from a multinomial distribution combined with straight-through gradient updates, which we name PSST for Partial-Sampling Straight-Through. We then show that the generated descriptions can be kept close to natural by constraining them to be similar to human descriptions. Together, this approach creates descriptions that are both more discriminative and more natural than previous approaches. Evaluations on the COCO benchmark show that PSST improve the recall@10 from 60% to 86% maintaining comparable language naturalness. Human evaluations show that it also increases naturalness while keeping the discriminative power of generated captions.
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