Novel Deep Learning Application: Recognizing Inconsistent Characters on Pharmaceutical Packaging

Jarmo Koponen, Keijo Haataja, Pekka J. Toivanen
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Abstract

Background Machine vision faces significant challenges when applied to text recognition on cardboard packaging particularly due to multiple printing methods, irregular character shapes, and curved packaging surfaces. Methods This research introduces a novel deep learning application for recognizing binarized expiration date and batch code characters printed using multiple printing methods. The method, based on Region-based Convolutional Neural Networks (R-CNN), enables character recognition directly from in the images without the need for extracting handcrafted features. In detail, this approach performs character recognition by using the whole image as input, extracting and learning salient character features directly from the packaging surface images. Results The R-CNN model, with a precision of 91.1% and an F1 score of 80.9%, effectively recognizes manufacturing markings on pharmaceutical packages, with inconsistencies in the characters’ shapes. In a comparative experiment using the same dataset of images, the R-CNN model significantly outperformed Tesseract OCR, achieving much higher precision, recall, and F1 scores. Conclusions The results of this study reveal that the deep learning method outperforms the well-established optical character recognition method in recognizing text characters printed with different printing methods. Presented in this study, the deep learning method recognizes text characters with high precision. It is also suitable for recognizing text printed on curved surfaces, provided proper preprocessing is applied. The problem investigated in the study differs from previous research in the field, focusing on the recognition of texts printed with different printing methods. The research thus fills a gap in text recognition that existed in the research of the field. Furthermore, the study presents new ideas that will be utilized in our future research.
新颖的深度学习应用:识别药品包装上不一致的字符
背景 机器视觉在应用于纸板包装上的文本识别时面临着巨大的挑战,特别是由于多种印刷方法、不规则的字符形状和弯曲的包装表面。方法 本研究介绍了一种新颖的深度学习应用,用于识别使用多种印刷方法印刷的二进制到期日期和批次代码字符。该方法基于基于区域的卷积神经网络(R-CNN),可直接从图像中识别字符,而无需提取手工制作的特征。具体来说,这种方法将整个图像作为输入,直接从包装表面图像中提取和学习突出的字符特征,从而进行字符识别。结果 R-CNN 模型的精确度为 91.1%,F1 得分为 80.9%,能有效识别药品包装上的生产标记,但字符形状不一致。在使用相同图像数据集进行的对比实验中,R-CNN 模型的表现明显优于 Tesseract OCR,获得了更高的精确度、召回率和 F1 分数。结论 本研究结果表明,深度学习方法在识别用不同印刷方法印刷的文本字符方面优于成熟的光学字符识别方法。本研究提出的深度学习方法能识别出高精度的文本字符。只要进行适当的预处理,该方法还适用于识别印刷在曲面上的文字。本研究调查的问题与该领域以往的研究不同,侧重于识别以不同印刷方法印刷的文本。因此,该研究填补了文本识别领域研究的空白。此外,这项研究还提出了一些新的想法,我们将在今后的研究中加以利用。
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