面向深度学习阿拉伯语文档分类的精细边缘检测

Taghreed Alghamdi, S. Snoussi, L. Hsairi
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引用次数: 1

摘要

本文描述了基于深度学习的边缘检测在图像处理中的实现。图像中图像亮度发生正式或剧烈变化的一组点称为边缘检测。利用边缘检测滤波器,我们可以提取目标的特征。在我们的工作中,我们的目标是开发一个深度学习系统,将阿拉伯语文档图像分为以下四类:印刷,手写,历史和招牌,并应用边缘检测滤波器从文档图像中提取特征。我们将使用两种边缘检测方法,即Sobel和Canny边缘检测,这两种方法应用于1000个阿拉伯文档图像中提取边缘。在均方误差(Mean Squared Error, MSE)的前提下,从精度角度分析了性能因素,并采用python实现边缘检测。实验结果表明,Canny边缘检测技术的检测效果优于Sobel边缘检测技术。
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Canny edge detection towards deep learning Arabic document classification
The paper describes the implementation of deep learning-based edge detection in image processing. A set of points in an image at which image brightness changes formally or sharply is called edge detection. Using edge detection filters, we can extract the feature of an object. In our work, we aim to develop a deep learning system to classify Arabic document images into four classes as follows: printed, handwritten, historical, and signboard and applying edge detection filters to extract features from document images. We will be using two edge detection methods namely Sobel, and Canny edge detection that are applied in 1000 Arabic document images to extract edges. Analyzing the performance factors are done in the terms of accuracy on the premise of Mean Squared Error (MSE) and python is employed for edge detection implementation. The experimental results show that the Canny edge detection technique results higher than the Sobel edge detection technique.
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