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Fast Korean Text Detection and Recognition in Traffic Guide Signs

机译:交通指南牌中的快速韩语文本检测和识别

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In this paper, we propose a fast method based on deep neural networks to detect and recognize Korean characters in traffic guide signs. To detect character candidates quickly, we first employ a region proposal network (RPN) which is in this paper ResNet-18, being relatively shallow. We also apply the Inception architecture to residual blocks for reducing parameters of the network. After character candidates are detected, we classify them into 709 Korean characters by using a classification network (CLSN). Similar to the RPN, our CLSN consists of residual blocks with the Inception architecture. In experiments, we achieved 97.69 % of accuracy at 5.9fps on both detection and recognition of Korean characters in traffic guide signs.
机译:在本文中,我们提出了一种基于深度神经网络的快速方法,用于检测和识别交通导向标志中的韩文字符。为了快速检测角色候选者,我们首先使用区域提议网络(RPN),该网络在本文中名为ResNet-18,相对较浅。我们还将Inception体系结构应用于残差块,以减少网络参数。在检测到候选字符后,我们使用分类网络(CLSN)将它们分类为709个韩文字符。与RPN相似,我们的CLSN由具有Inception体系结构的剩余块组成。在实验中,我们以5.9fps的速度检测和识别交通导向标志中的朝鲜语字符,其准确率达到了97.69%。

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