Narrative Player: Reviving Data Narratives With Visuals

Zekai Shao;Leixian Shen;Haotian Li;Yi Shan;Huamin Qu;Yun Wang;Siming Chen
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Abstract

Data-rich documents are commonly found across various fields such as business, finance, and science. However, a general limitation of these documents for reading is their reliance on text to convey data and facts. Visual representation of text aids in providing a satisfactory reading experience in comprehension and engagement. However, existing work emphasizes presenting the insights within phrases or sentences, rather than fully conveying data stories within the whole paragraphs and engaging readers. To provide readers with satisfactory data stories, this paper presents Narrative Player, a novel method that automatically revives data narratives with consistent and contextualized visuals. Specifically, it accepts a paragraph and corresponding data table as input and leverages LLMs to characterize the clauses and extract contextualized data facts. Subsequently, the facts are transformed into a coherent visualization sequence with a carefully designed optimization-based approach. Animations are also assigned between adjacent visualizations to enable seamless transitions. Finally, the visualization sequence, transition animations, and audio narration generated by text-to-speech technologies are rendered into a data video. The evaluation results showed that the automatic-generated data videos were well-received by participants and experts for enhancing reading.
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叙述玩家:用视觉效果复兴数据叙述
数据丰富的文档通常可以在商业、金融和科学等各个领域找到。然而,阅读这些文件的一个普遍限制是它们依赖文本来传达数据和事实。文本的视觉表现有助于在理解和参与方面提供令人满意的阅读体验。然而,现有的工作强调在短语或句子中呈现见解,而不是在整个段落中完整地传达数据故事并吸引读者。为了给读者提供令人满意的数据故事,本文提出了叙事播放器,这是一种新颖的方法,可以自动恢复具有一致和情境化视觉效果的数据叙事。具体来说,它接受一个段落和相应的数据表作为输入,并利用llm来描述子句并提取上下文数据事实。随后,通过精心设计的基于优化的方法,将事实转换为连贯的可视化序列。动画也在相邻的可视化之间分配,以实现无缝过渡。最后,将文本转语音技术生成的可视化序列、过渡动画和音频叙述呈现为数据视频。评估结果显示,自动生成的数据视频在提高阅读能力方面受到了参与者和专家的好评。
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