Handwritten Gujarati script recognition with image processing and deep learning

S. Aniket, R. Atharva, C. Prabha, D. Rupali, P. Shubham
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引用次数: 2

Abstract

The motive behind writing this paper is to throw light on the proposed application which can be used for detecting and recognizing Gujarati handwritten scripts using image processing and machine learning techniques. It emphasizes the key technologies involved in this process. There is a lot of variation in the handwriting of people and the curves involved in the characters of the Gujarati language and therefore possess a challenge in the process. The paper features all the important phases in character recognition and detection process namely image acquisition, preprocessing, segmentation, classification and recognition, and post-processing. It also emphasizes the key aspects like the designing a neural network suitable for the challenging task of handwritten character recognition in Gujarati scripts, training and testing that model and fine-tuning various hyper-parameters to get the best accuracy. The paper can be referred by researchers and technology enthusiasts to develop systems for Gujarati script recognition. The paper aims to present and deal with special properties associated with Gujarati script.
手写古吉拉特文字识别与图像处理和深度学习
写这篇论文的动机是为了阐明提议的应用程序,该应用程序可用于使用图像处理和机器学习技术检测和识别古吉拉特手写脚本。重点介绍了该过程中涉及的关键技术。古吉拉特人的笔迹和曲线有很多变化,因此在这个过程中具有挑战性。本文介绍了字符识别和检测过程中的所有重要阶段,即图像采集、预处理、分割、分类识别和后处理。它还强调了关键方面,如设计一个适合古吉拉特语手写字符识别的挑战性任务的神经网络,训练和测试该模型,微调各种超参数以获得最佳精度。本文可以为研究人员和技术爱好者开发古吉拉特文字识别系统提供参考。本文旨在介绍和处理与古吉拉特文字相关的特殊属性。
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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