一个完整的标识检测/识别系统的文件图像

Alireza Alaei, Mathieu Delalandre
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引用次数: 28

摘要

本文提出了一个完整的文档图像标识检测/识别系统。在该系统中,首先采用标志检测方法检测文档图像中可能包含标志的几个感兴趣区域(标志补丁)。该检测方法基于分段绘制算法(PPA)和一些概率特征以及决策树。在标识识别方面,提出了一种基于模板的标识识别方法来识别每个检测到的标识补丁中可能存在的标识。所提出的标志识别策略使用搜索空间约简技术来减少在检测到的标志补丁中识别标志所需的模板标志模型的数量。用于搜索空间缩减的特征是基于检测到的标识补丁的几何属性。基于我们对Tobacco800数据集的1290张文档图像的实验,99.31%的标识被检测为标识补丁。在检测到的标识补丁中,97.90%的标识被公平识别。综合考虑logo检测和识别结果,从系统整体性能来看,97.22%的文档图像logo能够被真实检测/识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Complete Logo Detection/Recognition System for Document Images
In this paper, a complete logo detection/ recognition system for document images is proposed. In the proposed system, first, a logo detection method is employed to detect a few regions of interest (logo-patches), which likely contain the logo(s), in a document image. The detection method is based on the piece-wise painting algorithm (PPA) and some probability features along with a decision tree. For the logo recognition, a template based recognition approach is proposed to recognize the logo which may present in every detected logo-patch. The proposed logo recognition strategy uses a search space reduction technique to decrease the number of template logo-models needed for the recognition of a logo in a detected logo-patch. The features used for search space reduction are based on the geometric properties of a detected logo-patch. Based on our experimentations on 1290 document images of Tobacco800 dataset, 99.31% of the logos were detected as logo-patches. Among the detected logo-patches 97.90% of logos were fairly recognized. Considering both logo detection and recognition results, 97.22% of the logos in the document images could truly be detected/recognized as the overall performance of the proposed system.
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