Handwriting Text Recognition using CNN and RNN

R. Sumathy, S. Swami, T. P. Kumar, V. L. Narasimha, B. Premalatha
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Abstract

In the field of optical character recognition, there are still unans wered research questions regarding the recognition of handwritten text. In this paper, an effective method for developing handwritten handbook recognition systems is proposed This article uses a 3-subcaste Convolutional Neural Network (CNN) and Recurrent Neural Network (RNN) in conjunction with a supervised literacy technique. Although bit chart descriptions of the input samples boost the delicateness of any textbook recognition system, they are used as point vectors in the s ys tern. The objective vectors are pre-processed before the resulting goal variables according to input samples are applied to the CNN. Using samples of each digit in the number 123, the CNN&RNN training procedure is carried out to verify the system's general connection to new inputs. Two different algorithms for literacy are utilized in this study. Cumulative image processing techniques have also been developed to deal with the several characters that are provided in a single image, cocked image, and rotated image. The trained systern provides a better delicacy.
使用CNN和RNN的手写文本识别
在光学字符识别领域,手写体文本的识别仍存在许多亟待解决的研究问题。本文提出了一种开发手写体手册识别系统的有效方法。本文使用了三次种姓卷积神经网络(CNN)和递归神经网络(RNN)结合监督识字技术。尽管输入样本的位图描述提高了任何教科书识别系统的精确度,但它们在s术语中被用作点向量。在将根据输入样本得到的目标变量应用于CNN之前,对目标向量进行预处理。使用数字123中每个数字的样本,执行CNN&RNN训练程序以验证系统与新输入的一般连接。本研究采用了两种不同的读写算法。累积图像处理技术也被开发来处理单个图像、倾斜图像和旋转图像中提供的几个字符。经过训练的系统提供了更好的精确度。
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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