Scene Text Recognition Based on Improved CRNN

Inf. Comput. Pub Date : 2023-06-28 DOI:10.3390/info14070369
Wenhua Yu, Mayire Ibrayim, A. Hamdulla
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Abstract

Text recognition is an important research topic in computer vision. Scene text, which refers to the text in real scenes, sometimes needs to meet the requirement of attracting attention, and there is the situation such as deformation. At the same time, the image acquisition process is affected by factors such as occlusion, noise, and obstruction, making scene text recognition tasks more challenging. In this paper, we improve the CRNN model for text recognition, which has relatively low accuracy, poor performance in recognizing irregular text, and only considers obtaining text sequence information from a single aspect, resulting in incomplete information acquisition. Firstly, to address the problems of low text recognition accuracy and poor recognition of irregular text, we add label smoothing to ensure the model’s generalization ability. Then, we introduce the smoothing loss function from speech recognition into the field of text recognition, and add a language model to increase information acquisition channels, ultimately achieving the goal of improving text recognition accuracy. This method was experimentally verified on six public datasets and compared with other advanced methods. The experimental results show that this method performs well in most benchmark tests, and the improved model outperforms the original model in recognition performance.
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基于改进CRNN的场景文本识别
文本识别是计算机视觉领域的一个重要研究课题。场景文本,是指真实场景中的文本,有时需要满足吸引眼球的要求,出现变形等情况。同时,图像采集过程受到遮挡、噪声、障碍物等因素的影响,使得场景文本识别任务更具挑战性。本文对文本识别的CRNN模型进行了改进,该模型准确率较低,对不规则文本的识别性能较差,并且只考虑从单一方面获取文本序列信息,导致信息获取不完整。首先,为了解决文本识别精度低、不规则文本识别能力差的问题,我们增加了标签平滑来保证模型的泛化能力。然后,将语音识别中的平滑损失函数引入文本识别领域,并加入语言模型增加信息获取通道,最终达到提高文本识别准确率的目的。该方法在6个公开数据集上进行了实验验证,并与其他先进方法进行了比较。实验结果表明,该方法在大多数基准测试中表现良好,改进后的模型在识别性能上优于原模型。
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