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Automatic Text Recognition in Natural Scene Using Neural Network Classifier with Dynamic-group-based Hybrid Particle Swarm Optimization

机译:使用基于动态组的混合粒子群优化的神经网络分类器在自然场景中进行自动文本识别

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This paper presents a two-stage algorithm for automatic text detection and recognition. In the first stage, using a stroke width transform and an improved connected component, an edge analysis method detects a candidate character region. Subsequently, a text region is located by filtering and linking characters with similar font sizes and colors. For the second stage, a histogram of oriented gradient is employed as a feature descriptor, and a neural network classifier is built with dynamic-group-based hybrid particle swarm optimization (DGHPSO) for character recognition. In DGHPSO, each group's threshold value of similarity depends on the threshold values of fitness and distance. In addition, a local search algorithm is used to improve the search for a global optimum. The proposed algorithm was experimentally validated; it outperformed a number of recently published studies in terms of the text recognition rate when tested on the ICDAR 2003 database and the Street View Text database.
机译:本文提出了一种用于文本自动检测和识别的两阶段算法。在第一阶段,使用笔划宽度变换和改进的连接组件,边缘分析方法检测候选字符区域。随后,通过过滤和链接具有相似字体大小和颜色的字符来定位文本区域。在第二阶段,将定向梯度直方图用作特征描述符,并使用基于动态组的混合粒子群优化算法(DGHPSO)构建神经网络分类器以进行字符识别。在DGHPSO中,每个组的相似性阈值取决于适应度和距离的阈值。另外,使用局部搜索算法来改善对全局最优的搜索。实验证明了该算法的有效性。在ICDAR 2003数据库和Street View Text数据库上进行测试时,在文本识别率方面,它的表现优于最近发表的许多研究。

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