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Feature Extractor Based Deep Method to Enhance Online Arabic Handwritten Recognition System

机译:基于特征提取的深度方法增强在线阿拉伯手写识别系统

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To enhance Arabic handwritten recognition (AHR) performance, a combination between online and offline features is investigated. In this paper we exploit handcrafted features based on beta-elliptic model and automatic features using deep classifier called Convolutional Deep Belief Network (CDBN). The experiments are conducted on two different Arabic databases: LMCA and ADAB databases which including respectively isolated characters and Tunisian names towns handwritten by several different writers. The advantage of the both databases was the offline images had built at the same time as the online trajectory. The test results show a significant improvement in recognition rate.
机译:为了增强阿拉伯文手写识别(AHR)的性能,研究了在线和离线功能之间的组合。在本文中,我们利用称为卷积深度信念网络(CDBN)的深度分类器,利用基于beta椭圆模型的手工特征和自动特征来进行开发。实验是在两个不同的阿拉伯数据库上进行的:LMCA和ADAB数据库,分别包含孤立的字符和几位不同作者手写的突尼斯名字城镇。这两个数据库的优点是离线图像与在线轨迹同时建立。测试结果表明识别率有了显着提高。

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