Enhancing Optical Character Recognition on Images with Mixed Text Using Semantic Segmentation

Shruti Patil, Varadarajan Vijayakumar, Supriya Mahadevkar, Rohan Athawade, Lakhan Maheshwari, Shrushti Kumbhare, Yash Garg, Deepak S. Dharrao, P. Kamat, K. Kotecha
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引用次数: 5

Abstract

Optical Character Recognition has made large strides in the field of recognizing printed and properly formatted text. However, the effort attributed to developing systems that are able to reliably apply OCR to both printed as well as handwritten text simultaneously, such as hand-filled forms, is lackadaisical. As Machine printed/typed text follows specific formats and fonts while handwritten texts are variable and non-uniform, it is very hard to classify and recognize using traditional OCR only. A pre-processing methodology employing semantic segmentation to identify, segment and crop boxes containing relevant text on a given image in order to improve the results of conventional online-available OCR engines is proposed here. In this paper, the authors have also provided a comparison of popular OCR engines like Microsoft Cognitive Services, Google Cloud Vision and AWS recognitions. We have proposed a pixel-wise classification technique to accurately identify the area of an image containing relevant text, to feed them to a conventional OCR engine in the hopes of improving the quality of the output. The proposed methodology also supports the digitization of mixed typed text documents with amended performance. The experimental study shows that the proposed pipeline architecture provides reliable and quality inputs through complex image preprocessing to Conventional OCR, which results in better accuracy and improved performance.
利用语义分割增强混合文本图像的光学字符识别
光学字符识别在识别打印文本和正确格式化文本方面取得了长足的进步。然而,开发能够同时可靠地将OCR应用于打印文本和手写文本(例如手工填写的表单)的系统所付出的努力是缺乏成效的。由于机器打印/键入的文本遵循特定的格式和字体,而手写文本是可变的和不统一的,因此仅使用传统的OCR很难分类和识别。本文提出了一种采用语义分割的预处理方法来识别、分割和裁剪给定图像上包含相关文本的框,以改善传统在线OCR引擎的结果。在本文中,作者还提供了流行的OCR引擎,如微软认知服务,谷歌云视觉和AWS识别的比较。我们提出了一种逐像素分类技术,以准确识别包含相关文本的图像区域,并将其提供给传统的OCR引擎,以期提高输出质量。所提出的方法还支持具有改进性能的混合打字文本文档的数字化。实验研究表明,本文提出的管道结构通过对传统OCR进行复杂的图像预处理,提供了可靠、高质量的输入,提高了精度和性能。
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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