Deep Convolutional Neural Network with a Stochastic Gradient Descent Optimizer (PDCNN-SGD) model for telugu character recognition

Siva Phaniram Josyula, Reddy M. Babu
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Abstract

Telugu Character Recognition (TCR) has received significant attention because of the drastic increase in technological advancements such as multimedia, smartphones and iPods, and paper documents. Offline character recognition is the process of identifying Telugu characters from the scanned image or document whereas online character recognition enables to recognition of characters by the machine while the user writes. Several researchers have attempted to design online TCR models by the use of distinct classification models and feature extraction approaches. It is still necessary to construct automated and intelligent online TCR models, even if many studies have focused on offline TCR models. The Telugu character dataset construction and validation using an Inception and ResNet-based model are presented. The collection of 645 letters in the dataset includes 18 Achus, 38 Hallus, 35 Othulu, 34*16 Guninthamulu and 10 Ankelu. The proposed technique aims to efficiently recognize and identify distinctive Telugu characters online. This model's main preprocessing steps to achieve its goals include normalization, smoothing, and interpolation. Improved recognition performance can be attained by using Stochastic Gradient Descent (SGD) to optimize the model's hyperparameters.
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基于随机梯度下降优化器(PDCNN-SGD)模型的深度卷积神经网络用于古鲁语字符识别
泰卢固语字符识别(TCR)受到了极大的关注,因为技术进步的急剧增加,如多媒体,智能手机和ipod,以及纸质文件。离线字符识别是从扫描的图像或文档中识别泰卢固语字符的过程,而在线字符识别使机器能够在用户书写时识别字符。一些研究人员尝试通过使用不同的分类模型和特征提取方法来设计在线TCR模型。尽管许多研究集中在离线TCR模型上,但仍然有必要构建自动化和智能的在线TCR模型。介绍了使用Inception和基于resnet的模型构建和验证泰卢固语字符数据集的方法。数据集中的645个字母包括18个Achus, 38个Hallus, 35个Othulu, 34*16个Guninthamulu和10个Ankelu。所提出的技术旨在有效地识别和识别在线上独特的泰卢固语字符。该模型实现其目标的主要预处理步骤包括归一化、平滑和插值。采用随机梯度下降(SGD)对模型的超参数进行优化,可以提高识别性能。
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