Processing and Recognition of Characters Image in Complex Environment

Ji Yuan, MinYang Guo, Binyan Huang, Ruiqi Hu, S. Dian
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Abstract

Aiming at the recognition in complex backgrounds using the Optical Character Recognition (OCR) technology, a model with high detection and recognition accuracy for small texts and codes in the images is proposed in this paper. Before recognition, the Retinex image enhancement and median filtering are performed to weaken the influence of ambient lighting and to enhance the image features. The Otsu threshold segmentation is adopted to segment the small text images from the background. Finally, the Differentiable Binarization (DB) algorithm is applied to detect the characters and the Convolutional Recurrent Neural Network (CRNN) algorithm is employed to recognize the detected characters. The experimental results show that in the life scenes, the workpiece components scenes, and the Chinese characters scenes, the recognition accuracies of the proposed model are 95.6%, 98.4%, and 90.9%, respectively; and the recognition times are 0.78s, 0.59s, and 0.63s, respectively. Overall, the average recognition accuracy of the model proposed in this paper reaches up to 94.9%, and the average recognition time is only 0.67s, which verifies the effectiveness and the advancement of the model.
复杂环境下字符图像的处理与识别
针对光学字符识别(OCR)技术在复杂背景下的识别问题,提出了一种对图像中的小文本和小代码具有较高检测和识别精度的模型。在识别前,对Retinex图像进行增强和中值滤波,减弱环境光照的影响,增强图像特征。采用Otsu阈值分割从背景中分割出小文本图像。最后,采用可微分二值化(DB)算法对字符进行检测,并采用卷积递归神经网络(CRNN)算法对检测到的字符进行识别。实验结果表明,在生活场景、工件部件场景和汉字场景中,所提模型的识别准确率分别为95.6%、98.4%和90.9%;识别时间分别为0.78s、0.59s和0.63s。总体而言,本文模型的平均识别准确率高达94.9%,平均识别时间仅为0.67s,验证了模型的有效性和先进性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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