使用深度残差学习的泰卢固语手写字符识别

Bindu Madhuri Cheekati, Roje Spandana Rajeti
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引用次数: 8

摘要

近年来是图像处理、模式识别和计算机视觉领域手写体字符识别的激动人心的时代。使用深度卷积神经网络识别手写字符是一个新时代。根据手工设计的特征,有各种可用于手写字符识别的技术。提出的工作是基于一个系统的方法来识别离线和在线泰卢固语手写字符与残余学习框架称为ResNet。残差学习网络是一个深度神经网络的概念,其中数据的训练更有效。通过解决深度卷积神经网络中出现的梯度消失问题,ResNet可以构建非常深度的网络。本文致力于开发一种快速、可靠的泰卢固语手写ResNet,用于在线和离线字符识别,并提高分类性能。使用iiits -泰卢固语笔迹数据库对该模型进行了评估;惠普实验室数据库(泰卢固语)印度取得了非常有希望的结果。所提出的残差网(ResNet-50)在ResNet-18和resnet - 34测试集上的误差达到2.37%。
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Telugu handwritten character recognition using deep residual learning
Present years are the exciting times for recognition of handwritten characters in the fields of Image Processing, Pattern Recognition, and Computer Vision. Recognizing handwritten characters using deep convolutional neural networks is a new era. There are various techniques available for handwritten recognition of characters, depending on hand-designed features. The proposed work is based on a systematic method to recognize both offline and online Telugu handwritten characters with residual learning framework called ResNet. A residual learning network is a concept of deeper neural networks where the training of the data is more effective. ResNet enables building very deep networks by addressing the vanishing gradient problem that occurs in deep convolutional neural networks. This paper deals in developing a fast, reliable Telugu handwritten ResNet for both online and offline character recognition and also improves the classification performance. The model is evaluated with IIITS-Telugu Handwriting Database; HP Labs database (Telugu) India and achieved very promising results. The Proposed residual net (ResNet-50) achieves 2.37% error on the ResNet-18 & 34 test set.
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