基于时间卷积的跳跃式连接在线阿拉伯手写识别

Dalila Othmen, Ramzi Zouari, H. Boubaker, M. Kherallah
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引用次数: 0

摘要

手写识别是文献分析领域的一个活跃研究领域。在过去的几十年里,观察到数据输入设备的快速增长和频繁使用。因此,有几种方法集中在在线手写建模和识别上。本文提出了一种基于椭圆模型和一维残差神经网络的在线阿拉伯文手写识别系统。采用β椭圆模型提取轨迹的动态和几何特征,而残差网络基于时间卷积和跳跃连接,能够表示输入数据的顺序方面。在公开的阿拉伯语手写体数据集LMCA上进行了实验,结果表明该识别模型的有效性,准确率达到96.87%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporal Convolution based Skip Connections for Online Arabic Handwriting Recognition
Handwriting recognition is an active research area in document analysis field. In the few last decades, a rapid growth and a frequent use of data entry devices was observed. Consequently, several approaches have focused on online handwriting modeling and recognition. In this paper, we presented a new system for online Arabic handwriting recognition based on beta-elliptic modeling and one dimensional Residual Neural Networks. Beta-elliptic model was applied to extract the dynamic and geometric characteristics of the trajectory, whereas the developed Residual Network is based on temporal convolution and skip connections and it has ability to represent the sequential aspect of the input data. The experiments have been done on the public Arabic handwriting dataset LMCA and showed the effectiveness of the proposed recognition model that reached the accuracy of 96.87%.
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