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Capsule-Based Persian/Arabic Robust Handwritten Digit Recognition Using EM Routing

机译:基于胶囊的基于EM路由的波斯/阿拉伯鲁棒手写数字识别

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In this paper, the problem of handwritten digit recognition has been addressed. However, the underlying language is Persian/Arabic, and the system with which this task is a capsule network (CapsNet) which has recently emerged as a more advanced architecture than its ancestor, namely CNN (Convolutional Neural Network). The training of the architecture is performed using Hoda dataset, which has been provided for Persian/Arabic handwritten digits. The output of the system, clearly outperforms the results achieved by its ancestors, as well as other previously presented recognition algorithms.
机译:本文解决了手写数字识别的问题。但是,基础语言是波斯语/阿拉伯语,用于执行此任务的系统是一个胶囊网络(CapsNet),该网络最近以比其祖先CNN(卷积神经网络)更高的体系结构出现。使用Hoda数据集对体系结构进行培训,该数据集已为波斯/阿拉伯语手写数字提供。该系统的输出明显优于其祖先以及其他先前提出的识别算法所获得的结果。

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