LYLAA: A Lightweight YOLO based Legend and Axis Analysis method for CHART-Infographics

Hadia Showkat Kawoosa, Muhammad Suhaib Kanroo, P. Goyal
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引用次数: 0

Abstract

Chart Data Extraction (CDE) is a complex task in document analysis that involves extracting data from charts to facilitate accessibility for various applications, such as document mining, medical diagnosis, and accessibility for the visually impaired. CDE is challenging due to the intricate structure and specific semantics of charts, which include elements such as title, axis, legend, and plot elements. The existing solutions for CDE have not yet satisfactorily addressed these issues. In this paper, we focus on two critical subtasks in CDE, Legend Analysis and Axis Analysis, and present a lightweight YOLO-based method for detection and domain-specific heuristic algorithms (Axis Matching and Legend Matching), for matching. We evaluate the efficacy of our proposed method, LYLAA, on a real-world dataset, the ICPR2022 UB PMC dataset, and observe promising results compared to the competing teams in the ICPR2022 CHART-Infographics competition. Our findings showcase the potential of our proposed method in the CDE process.
LYLAA:一个轻量级的基于YOLO的图例和轴分析方法的图表信息图
图表数据提取(CDE)是文档分析中的一项复杂任务,它涉及从图表中提取数据,以促进各种应用程序的可访问性,例如文档挖掘、医疗诊断和视障人士的可访问性。由于图表的复杂结构和特定语义,CDE具有挑战性,其中包括标题、轴、图例和情节元素等元素。CDE的现有解决方案尚未令人满意地解决这些问题。在本文中,我们关注CDE中的两个关键子任务,图例分析和轴分析,并提出了一种轻量级的基于yolo的检测方法和特定领域的启发式算法(轴匹配和图例匹配),用于匹配。我们评估了我们提出的方法LYLAA在现实世界数据集ICPR2022 UB PMC数据集上的有效性,并与ICPR2022 CHART-Infographics竞赛中的竞争团队相比,观察到有希望的结果。我们的发现展示了我们提出的方法在CDE过程中的潜力。
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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