Actor-Critic Sequence Generation for Relative Difference Captioning

Z. Fei
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引用次数: 7

Abstract

This paper investigates a new task named relative difference caption which aims to generate a sentence to tell the difference between the given image pair. Difference description is a crucial task for developing intelligent machines that can understand and handle changeable visual scenes and applications. Towards that end, we propose a reinforcement learning-based model, which utilizes a policy network and a value network in a decision procedure to collaboratively produce a difference caption. Specifically, the policy network works as an actor to estimate the probability of next word based on the current state and the value network serves as a critic to predict all possible extension values according to current action and state. To encourage generating correct and meaningful descriptions, we leverage a visual-linguistic similarity-based reward function as feedback. Empirical results on the recently released dataset demonstrate the effectiveness of our method in comparison with various baselines and model variants.
相对差异字幕的演员评论序列生成
本文研究了一种新的任务——相对差异标题,该任务旨在生成一个句子来区分给定图像对之间的差异。差分描述是开发能够理解和处理变化的视觉场景和应用的智能机器的关键任务。为此,我们提出了一种基于强化学习的模型,该模型利用决策过程中的策略网络和价值网络协同产生差异说明。其中,策略网络作为行动者根据当前状态估计下一个单词的概率,价值网络作为批评家根据当前动作和状态预测所有可能的扩展值。为了鼓励生成正确和有意义的描述,我们利用基于视觉语言相似性的奖励功能作为反馈。最近发布的数据集上的实证结果表明,与各种基线和模型变量相比,我们的方法是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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