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Comparison between Feature Based and Deep Learning Recognition Systems for Handwriting Arabic Numbers

机译:基于特征和深度学习的阿拉伯数字识别系统的比较

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Feature extraction from images is an essential part of the recognition system. Calculating the appropriate features is critical to the part of the classification process. However, there are no standard features nor a widely accepted feature set exist applied to all applications, features must be application dependent. In contrast, deep learning extract features from an image without need for human hard-coding the features extraction process. This can be very useful to build a model for classification which can classify any type of images after trained with enough images with labels then the trained model can be used in different recognition applications to classify. This paper presents two techniques to build recognition system for Arabic handwriting numbers, the feature-based method shows accepted results. However, the deep learning method gives more accurate results and required less study on how Arabic number is written and no hand-coding algorithms needed for feature extraction to be used in the classification process.
机译:从图像中提取特征是识别系统的重要组成部分。计算适当的特征对于分类过程的一部分至关重要。但是,没有标准功能,也没有适用于所有应用程序的广泛接受的功能集,这些功能必须依赖于应用程序。相反,深度学习无需人工对特征提取过程进行硬编码即可从图像中提取特征。这对于构建用于分类的模型非常有用,该模型可以在用足够的带有标签的图像训练后对任何类型的图像进行分类,然后将训练后的模型用于不同的识别应用中进行分类。本文提出了两种建立阿拉伯文手写体数字识别系统的技术,基于特征的方法显示出可接受的结果。但是,深度学习方法可提供更准确的结果,并且对阿拉伯数字的书写方式进行的研究较少,并且无需在分类过程中使用用于特征提取的手动编码算法。

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