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Deep Learning Based Container Text Recognition

机译:基于深度学习的集装箱文本识别

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Traditional character segmentation has low accuracy for container scene text recognition. Convolutional recurrent neural network (CRNN) and connectionist text proposal network (CTPN) methods cannot extract container text features effectively. This paper proposes a novel Container Text Detection and Recognition Network (CTDRNet) for accurately detecting and recognizing container scene text. The CTDRNet consists of three components: (1) CTDRNet text detection enables to improve detection accuracy for single words; (2) CTDRNet text recognition has faster convergence speed and detection accuracy; (3) CTDRNet post-processing improves detection and recognition accuracy. In the end, the CTDRNet is implemented and evaluated with an accuracy of 96% and processing rate of 2.5 fps.
机译:传统的字符分割对容器场景文本识别的准确性很低。卷积复制神经网络(CRNN)和连接主义文本提案网络(CTPN)方法无法有效提取容器文本功能。本文提出了一种新颖的集装箱文本检测和识别网络(CTDRNET),用于准确检测和识别容器场景文本。 CTDRNET由三个组件组成:(1)CTDRNET文本检测可以提高单个单词的检测精度; (2)CTDRNET文本识别具有更快的收敛速度和检测精度; (3)CTDRNET后处理提高了检测和识别准确性。最终,通过96%的精度和2.5 fps的处理速率来实现和评估CTDRNET。

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