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Real time object detection using Hopfield neural network for Arabic printed letter recognition

机译:使用Hopfield神经网络进行实时目标检测以识别阿拉伯文字

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摘要

In this work, a new technique of improving Hopfield model for object edge detection of Arabic letters recognition is proposed. In conventional methods, different trends for object segmentation are used to split cursive letters individually for recognition. The presented technique differentiates only letters with no maintain of background data. Each letter is a set of clustered small weights distributed according to its shape within the word. The average of Total Letter Weight is a special property for each form of the letters. Preliminary experimental tests show positive performance of the proposed system.
机译:在这项工作中,提出了一种改进Hopfield模型的阿拉伯字母识别目标边缘检测的新技术。在常规方法中,用于对象分割的不同趋势被用于单独分割草书字母以进行识别。提出的技术仅区分字母,不保留背景数据。每个字母是一组聚簇的小权重,这些权重根据其在单词中的形状分布。总字母重量的平均值是每种字母形式的特殊属性。初步实验测试表明,该系统具有良好的性能。

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