使用cGAN和CNN识别手写离线泰米尔字符

N. Sasipriyaa, P. Natesan, R. Anand, P. Arvindkumar, R. S. Arwin Prakadis, K. Aswin Surya
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引用次数: 2

摘要

在很长一段时间里,来自不同地理位置的人们都能识别这些手写体。在这种情况下,人类文字的机器抄本对于传递政治历史、社会生活、金融生活、宗教、哲学等统计数据非常重要。尽管手写体字符识别的普及在英语、中文和阿拉伯语等许多语言中都实现了,但在印度语言中却没有实现。研究人员通过发现大量的曲线,笔画和字符中的洞,大量的字符集,复杂的字母结构和较少的数据集来探索苛刻的情况。生成对抗网络(GANs)是深度学习领域一个有趣的创新。由于手写泰米尔字符数据集的可用性最低,GAN有助于增强数据集。被称为GAN的丰富方法在获得指定数量的数据集方面是非常可行的。使用条件生成对抗网络(Conditional Generative Adversarial Network, cGAN)的模型生成器可以有条件地生成图像。它基于一个类标签,允许生成特定类型的图像。卷积神经网络(CNN)是一类人工神经网络,用于识别泰米尔语手写字符。该方法的实现精度在99%以上。本文提出的工作将通过增强使用cGAN和CNN的泰米尔语手写字符识别的数据集顺序来提高准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognizing Handwritten Offline Tamil Character by using cGAN & CNN
The handwritten characters were being recognized by various people from different geographical locations for long period. In this, machine transcripts of human writings are important for transferring the statistics like political history, social life, financial life, religion, philosophy, and much more. Though this popularity of handwritten character recognition is achieved for a lot of languages such as English, Chinese, and Arabic, it is not achieved for Indian languages. The demanding situations explored through researchers in spotting a lot of curves, strokes, and holes in characters, massive character set, complicated letter structure, and less dataset. Generative Adversarial Network (GANs) is an interesting innovation in Deep Learning. Due to the least availability of the dataset for handwritten Tamil characters, GAN assists to boost the dataset. The enriched method referred to as GAN, is far feasible to get the specified quantity of dataset. The images can be conditionally generated by using a model generator of Conditional Generative Adversarial Network (cGAN). It is based upon a class label that permits the generation of a specific kind of image. A Convolutional Neural Network (CNN) is a class of artificial neural networks, used to recognize Tamil handwritten characters. The implementation of such methods has an accuracy of over 99 %. The proposed work would improve the accuracy by enhancing the dataset order of the Tamil Handwritten Character Recognition using cGAN and CNN.
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