Mind's eye: A recurrent visual representation for image caption generation

Xinlei Chen, C. L. Zitnick
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引用次数: 479

Abstract

In this paper we explore the bi-directional mapping between images and their sentence-based descriptions. Critical to our approach is a recurrent neural network that attempts to dynamically build a visual representation of the scene as a caption is being generated or read. The representation automatically learns to remember long-term visual concepts. Our model is capable of both generating novel captions given an image, and reconstructing visual features given an image description. We evaluate our approach on several tasks. These include sentence generation, sentence retrieval and image retrieval. State-of-the-art results are shown for the task of generating novel image descriptions. When compared to human generated captions, our automatically generated captions are equal to or preferred by humans 21.0% of the time. Results are better than or comparable to state-of-the-art results on the image and sentence retrieval tasks for methods using similar visual features.
心灵之眼:图像标题生成的循环视觉表示
本文探讨了图像及其基于句子的描述之间的双向映射。我们的方法的关键是一个循环神经网络,它试图在生成或读取标题时动态地构建场景的视觉表示。这种表征会自动学会记忆长时间的视觉概念。我们的模型既能够生成给定图像的新标题,也能够在给定图像描述的情况下重建视觉特征。我们在几个任务上评估我们的方法。其中包括句子生成、句子检索和图像检索。最先进的结果显示为生成新的图像描述任务。与人类生成的标题相比,我们自动生成的标题在21.0%的情况下与人类相同或更受人类青睐。使用相似视觉特征的方法在图像和句子检索任务上的结果优于或与最先进的结果相当。
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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