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A Hierarchical Logo Detection and Recognition Algorithm Using Two-Stage Segmentation and Multiple Classifiers

机译:基于两阶段分割和多个分类器的分层徽标检测与识别算法

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Logo detection and recognition module is a principle requirement in official automation systems for document image archiving and retrieval applications. In this paper, we present a logo detection and recognition algorithm based on sequential segmentation and classification strategy of document image. In this framework, using a two-stage segmentation algorithm (consisting of wavelet-based and threshold-based segmentation algorithm) and hierarchical classification by two multilayer perceptron (MLP) classifiers and a k-nearest neighbor (KNN) classifier, a document image divides to text, pure picture and logo candidate regions. Ultimately, in final decision, class of logo candidate region is determined based on pre-defined classes. In the hierarchical classification and logo recognition stages, the best feature space is selected by forward selection algorithm from a perfect set of texture and shape features. The proposed structure is evaluated on a variety and vast database consisting of the document and non-document images with Persian and international logos. The obtained results show efficiency of the proposed framework in the real and operational conditions.
机译:徽标检测和识别模块是官方自动化系统中用于文档图像归档和检索应用程序的一项基本要求。本文提出了一种基于文档图像顺序分割和分类策略的徽标检测与识别算法。在此框架中,使用两阶段分割算法(由基于小波的分割和基于阈值的分割算法组成),并通过两个多层感知器(MLP)分类器和一个k近邻(KNN)分类器进行分层分类,文档图像进行划分文字,纯图片和徽标候选区域。最终,在最终决策中,将基于预定义的类别确定徽标候选区域的类别。在分层分类和徽标识别阶段,通过正向选择算法从一组完美的纹理和形状特征中选择最佳特征空间。在各种庞大的数据库(包括带有波斯和国际徽标的文档和非文档图像)上评估了提议的结构。获得的结果表明了该框架在实际和操作条件下的效率。

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