手写体德文汉字分类的性能改进

Shivansh Gupta, R. Mohapatra
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引用次数: 4

摘要

光学字符识别模型具有实时识别字符的能力。在光学字符识别领域的广泛研究工作已经导致了各种语言的鲁棒识别机制的发展。人工智能和深度学习的概念在该领域的技术进步中发挥了重要作用。但仍有一些语言没有有效的光学字符识别(OCR)系统,但有大量的古代文献以经文和手稿的形式存在,这些文献与现在仍然相关。近年来,传统的卷积神经网络(CNN)在图像处理和模式识别方面的应用取得了显著的进展。但是,CNN的池化操作忽略了重要的空间信息,而空间信息在很多情况下是必不可少的属性。本文提出的胶囊网络提取空间信息,提高了传统CNN的能力。它使用胶囊来描述多维特征,并使用动态路由来提高网络性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Improvement in Handwritten Devanagari Character Classification
The optical character recognition models have the capability to recognize the characters in real-time. Extensive research work in the field of optical character recognition has led to the development of robust recognition mechanisms for various languages. The concepts of Artificial Intelligence and Deep learning have played a significant role in technological advancements in this field. But there are still some languages that don't have efficient Optical Character Recognition (OCR) systems but have vast ancient literature in the form of scriptures and manuscripts which are still relevant in the present. In recent years, the conventional Convolutional Neural Network (CNN) has performed distinctly in image processing and pattern recognition applications. But the pooling operation in CNN ignores the important spatial information, which proves to be an essential attribute in many cases. The proposed Capsule Network extracts spatial information and improves the capabilities of traditional CNN. It uses capsules to describe features in multiple dimensions and dynamic routing to increase the performance of the network.
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