基于层次BERT语义引导的视觉叙事

Ruichao Fan, Hanli Wang, Jinjing Gu, Xianhui Liu
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引用次数: 3

摘要

由于相册内容的复杂性和多样性,以自动生成相册叙事段落为目的的视觉叙事仍然具有很大的挑战性。此外,开放域相册涵盖了广泛的主题,这导致了描述相册的高度可变的词汇和表达风格。本文提出了一种基于分层BERT语义引导的师生视觉叙事框架。提出的教师模块包括两个联合任务,即词级潜在话题生成和语义引导句子生成。第一个任务旨在预测故事的潜在主题。由于没有真实的主题信息,使用基于视觉内容和带注释的故事的预训练BERT模型来挖掘主题。然后将主题向量提炼成设计好的图像-主题预测模型。在语义引导的句子生成任务中,引入HBSG有两个目的。首先是缩小跨主题的语言复杂性,设计具有视觉和语义的共同关注解码器,利用潜在主题来推导与主题相关的语言模型。二是将句子语义作为在线外部语言知识教师模块。最后,设计了一个辅助损失,将语言知识转化为语言生成模型。进行了大量的实验来证明HBSG框架的有效性,它超过了在VIST测试集上评估的最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual Storytelling with Hierarchical BERT Semantic Guidance
Visual storytelling, which aims at automatically producing a narrative paragraph for photo album, remains quite challenging due to the complexity and diversity of photo album content. In addition, open-domain photo albums cover a broad range of topics and this results in highly variable vocabularies and expression styles to describe photo albums. In this work, a novel teacher-student visual storytelling framework with hierarchical BERT semantic guidance (HBSG) is proposed to address the above-mentioned challenges. The proposed teacher module consists of two joint tasks, namely, word-level latent topic generation and semantic-guided sentence generation. The first task aims to predict the latent topic of the story. As there is no ground-truth topic information, a pre-trained BERT model based on visual contents and annotated stories is utilized to mine topics. Then the topic vector is distilled to a designed image-topic prediction model. In the semantic-guided sentence generation task, HBSG is introduced for two purposes. The first is to narrow down the language complexity across topics, where the co-attention decoder with vision and semantic is designed to leverage the latent topics to induce topic-related language models. The second is to employ sentence semantic as an online external linguistic knowledge teacher module. Finally, an auxiliary loss is devised to transform linguistic knowledge into the language generation model. Extensive experiments are performed to demonstrate the effectiveness of HBSG framework, which surpasses the state-of-the-art approaches evaluated on the VIST test set.
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