数字化手写德文文本使用CNN迁移学习-更好的客户服务支持

Sandeep Dwarkanath Pande , Pramod Pandurang Jadhav , Rahul Joshi , Amol Dattatray Sawant , Vaibhav Muddebihalkar , Suresh Rathod , Madhuri Navnath Gurav , Soumitra Das
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引用次数: 17

摘要

梵文是印度各种语言文字的基础之一。随着计算机技术的发展,人工系统被自动化系统所取代。本研究的目的是利用自动化的方法,使现有的手抄本数字化手工系统自动化,从而节省时间和古老的数据。专家医生开的处方和古吠陀文献中的治疗方法对治疗重病患者很有用。数字化有助于方便地访问、操作和更长时间地存储这些数据。与英语等西方语言不同,Devanagari在印度是一种著名的文字,没有正式的数字化工具。这项工作采用了最适合的技术来提高识别率,并配置了一个卷积神经网络(CNN)来进行有效的Devanagari手写文本识别(DHTR)。该方法使用Devanagari手写字符数据集(DHCD),该数据集是一个强大的开放数据集,包含46类Devanagari字符,每个类有2000个不同的图像。识别后,冲突的解决对于有效的识别来说是微妙的,因此,该方法为用户处理冲突提供了一种安排。该方法在准确率和训练时间方面都取得了令人满意的效果。
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Digitization of handwritten Devanagari text using CNN transfer learning – A better customer service support

Devanagari script is one of the bases of various language scripts in India. With the growth of computing and technology, manual systems are replaced by automated one. The purpose of this research is to automate the existing manual system for digitization of Devanagari script with the use of an automated approach so that it saves time, antique data. The prescriptions given by the expert doctors and the treatments which are present in ancient Vedic literature are useful for handling patients with serious diseases. Digitization helps in easy access, manipulation, and longer storage of this data. Unlike Western languages such as English, Devanagari, is a famous script in India which does not have formal digitization tools. This work employs the best suited techniques that are useful to enhance the recognition rate and configures a Convolutional Neural Network (CNN) for effective Devanagari handwritten text recognition (DHTR). This approach uses Devanagari handwritten character dataset (DHCD) which is a vigorous open dataset with 46 classes of Devanagari characters and each of this class has two thousand different images. After recognition, conflict resolution is subtle for effective recognition therefore, this approach provides an arrangement to the user to handle the conflicts. This approach obtains promising results in terms of accuracy and training time.

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来源期刊
Neuroscience informatics
Neuroscience informatics Surgery, Radiology and Imaging, Information Systems, Neurology, Artificial Intelligence, Computer Science Applications, Signal Processing, Critical Care and Intensive Care Medicine, Health Informatics, Clinical Neurology, Pathology and Medical Technology
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