Image Recommendation for Automatic Report Generation using Semantic Similarity

Changhun Hyun, Hyeyoung Park
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引用次数: 2

Abstract

Automatic report generation is a technology that automatically generates documents in the form of report by summarizing various materials according to a specific topic in time sequence or subject. Although the main content of the report is text, insertion of appropriate images can improve the completeness of the report. In this paper, we propose an image recommendation method for automatically selecting and inserting appropriate images corresponding to a specific part of a report. In our proposed method, reevaluation of the candidate images is performed based on the semantic similarity between query and the contents of the images. In order to transform semantic information of text query and image into one vector space, we extracted semantic information from image as a set of tags form using deep learning based object detection module. Also, we extracted tags from the given title of the image so that the proposed system can evaluate the candidate images even in the case that the given query includes specific keywords or proper nouns which were not learned by object detection and recognition module in advance. In this paper, we conducted experiments on eight queries related to recent events to verify the applicability of our proposed image recommendation system and evaluate the image selection accuracy.
使用语义相似度自动生成报表的图像推荐
自动报表生成是一种根据特定的主题或时间顺序,对各种资料进行汇总,自动生成报表形式文档的技术。虽然报告的主要内容是文字,但适当插入图片可以提高报告的完整性。在本文中,我们提出了一种图像推荐方法,用于自动选择和插入与报告的特定部分相对应的合适图像。在我们提出的方法中,基于查询和图像内容之间的语义相似性对候选图像进行重新评估。为了将文本查询和图像的语义信息转换为一个向量空间,我们使用基于深度学习的目标检测模块从图像中提取语义信息作为一组标签形式。此外,我们从给定的图像标题中提取标签,使得系统可以在给定查询包含特定关键词或专有名词的情况下评估候选图像,这些关键词或专有名词是物体检测和识别模块事先没有学习到的。在本文中,我们对8个与近期事件相关的查询进行了实验,以验证我们提出的图像推荐系统的适用性,并评估图像选择的准确性。
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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