Text Recognition Based On Encoder And Decoder Framework

Subhashini Peneti, Thulasi Chitra
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Abstract

Now-a-days we all are using digital technologies in all sections. Handwriting textbook recognition is an active and utmost exploration areas in the field of image processing and pattern recognition but, still we’re using Handwriting clones converted into electronic clones to communicate and store electronically.Through the textbook, we reuse the supplied image, rooting features, and feting it. The training of the system to fete and classify objects takes place, as well as the creation of a bracket schema. The system is trained using this system. Handwriting textbook recognition refers to detecting the computer digital comprehensible. Handwriting textbook input for Handwriting sources similar as photos, paper documents, and other sources. Occasionally it’s complex to understand the mortal hand jotting as cursive handwriting, Poor quality document/ image, different individualities have different handwriting styles and other coffers.The main end of this design is to develop a Handwriting textbook recognition system which is used to read scholars and lectures handwritten notes, croakers conventions, Research and Development labs etc. A handwriting recognition system handles formatting, performs correct segmentation into characters, and find correct presumptive of words. The use of neural networks for feting handwriting textbook is more effective and robust. The end is to ameliorate the effectiveness of neural networks for Handwriting textbook recognition. Keywords - Presumptive, Pattern, Neural
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基于编码器和解码器框架的文本识别
如今,我们在各个领域都在使用数字技术。手写体教科书识别是图像处理和模式识别领域中一个活跃而又极具探索意义的领域,但我们仍然在使用手写体克隆转换成电子克隆进行电子交流和存储。通过教材,我们对所提供的图像进行了再利用,并对其进行了特征提取和测试。训练系统对对象进行标记和分类,以及创建括号模式。该系统使用该系统进行训练。手写教科书识别是指检测计算机数字可理解性。笔迹教科书输入笔迹来源类似的照片,纸质文件,和其他来源。有时很难理解人类的手写是草书,文件/图像质量差,不同的个性有不同的手写风格和其他保险箱。本设计的主要目的是开发一个手写教科书识别系统,用于读取学者和讲座的手写笔记、克罗克惯例、研发实验室等。手写识别系统处理格式,执行正确的字符分割,并找到正确的假设词。利用神经网络对手写教科书进行检测,具有更强的鲁棒性和有效性。最后,改进神经网络在手写体教科书识别中的有效性。关键词:假定,模式,神经
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