基于时间残差网络的阿拉伯文手写识别多头注意模型

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

摘要

在本研究中,我们开发了一种基于多头注意模型的时间残差网络在线阿拉伯文手写识别系统。注意机制的应用背后的主要思想是通过所有输入序列的加权组合来关注数据中最相关的部分。此外,我们应用β椭圆方法来表示手写运动的运动学和几何方面。这种方法包括表现写作行为中涉及的神经肌肉冲动。在动态剖面中,曲线速度可以通过重叠beta函数的代数和来拟合,而原始轨迹可以通过在连续速度极值时刻之间划分的椭圆弧来重建。在包含23141个阿拉伯文手写字母轨迹坐标的LMCA数据库上进行了实验,取得了令人满意的结果,识别率达到了97,12%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporal residual network based multi-head attention model for arabic handwriting recognition
In this study, we developed a new system for online Arabic handwriting recognition based on temporal residual networks with multi-head attention model. The main idea behind the application of attention mechanism was to focus on the most relevant parts of the data by a weighted combination of all input sequences. Moreover, we applied beta elliptic approach to represent both kinematic and geometric aspects of the handwriting motion. This approach consists of representing the neuromuscular impulses involving during the writing act. In the dynamic profile, the curvilinear velocity can be fitted by an algebraic sum of overlapped beta functions, while the original trajectory can be rebuilt by elliptic arcs delimited between successive extremum velocity instants. The experiments were conducted on LMCA database containing the trajectory coordinates of 23141 Arabic handwriting letters, and showed very promising results that achieved the recognition rate of 97,12%
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