Massive Figure Extraction and Classification in Electronic Component Datasheets for Accelerating PCB Design Preparation

Kuan-Chun Chen, Chou-Chen Lee, Mark Po-Hung Lin, Yan-Jhih Wang, Yi-Ting Chen
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引用次数: 1

Abstract

Before starting printed-circuit-board (PCB) design, it is usually very time-consuming for PCB and system designers to review a large amount of electronic component datasheets in order to determine the best integration of electronic components for the target electronic systems. Each datasheet may contain over hundred figures and tables, while the figures and tables usually present the most important electronic component specifications. This paper categorizes various figures, including tables, in electronic component datasheets, and proposes the ECS-YOLO model for massive figure extraction and classification in order to accelerate PCB design preparation process. The experimental results show that, compared with the state-of-the-art object detection model, the proposed ECS-YOLO can consistently achieve better accuracy for figure extraction and classification in electronic component datasheets.
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电子元件数据表中海量图形的提取与分类,加速PCB设计准备
在开始印刷电路板(PCB)设计之前,为了确定目标电子系统的最佳电子元件集成,PCB和系统设计人员通常非常耗时地审查大量的电子元件数据表。每个数据表可能包含一百多个图表和表格,而这些图表和表格通常表示最重要的电子元件规格。本文对电子元器件数据手册中的各种图形(包括表格)进行了分类,并提出了ECS-YOLO模型,用于大量的图形提取和分类,以加快PCB设计准备过程。实验结果表明,与现有的目标检测模型相比,所提出的ECS-YOLO模型在电子元器件数据表的图像提取和分类中始终能够达到更高的精度。
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