用Android应用程序从图像中识别手写文本

Hanumant Mule, Namrata Kadam, D. Naik
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引用次数: 2

摘要

如今,从手写文档中存储信息以备将来使用变得很有必要。存储信息的一种简单方法是捕获手写文档并将其保存为图像格式。识别图像中的文本或字符称为光学字符识别。在最近的研究中,由于笔画变化、书写风格不一致、草书等原因,从图像中提取文本具有挑战性。在这项工作中,我们提出了CNN和BiLSTM模型用于文本识别。该模型在IAM数据集上进行了评估,达到了92%的字符识别准确率。此模型作为自定义模型部署到Firebase,以提高可用性。我们开发了一个android应用程序,允许用户捕获或浏览图像,并通过调用firebase模型从图片中提取文本,并将文本保存在文件中。要存储文本文件,用户可以浏览合适的位置。该模型适用于印刷文本和手写文本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Handwritten Text Recognition from an Image with Android Application
Nowadays, Storing information from handwritten documents for future use is becoming necessary. An easy way to store information is to capture handwritten documents and save them in image format. Recognizing the text or characters present in the image is called Optical Character Recognition. Text extraction from the image in the recent research is challenging due to stroke variation, inconsistent writing style, Cursive handwriting, etc. We have proposed CNN and BiLSTM models for text recognition in this work. This model is evaluated on the IAM dataset and achieved 92% character recognition accuracy. This model is deployed to the Firebase as a custom model to increase usability. We have developed an android application that will allow the user to capture or browse the image and extract the text from the picture by calling the firebase model and saving text in the file. To store the text file user can browse for the appropriate location. The proposed model works on both printed and handwritten text.
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