快速极端学习机柏柏尔手写拉丁脚本

Mokrane Kemiche, Malika Sadou, N. Bousba
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引用次数: 1

摘要

本文研究了利用极限学习机对柏柏尔语手写字符进行识别的问题。该范式以其高效的学习速度和较高的准确率在模式识别领域受到了广泛的关注。在本文中,我们使用了一种快速的极限学习机来高效地识别拉丁柏柏尔字符。因此,所提出的ELM已经在包含Amazigh字母图像的Berber-MNIST数据集上进行了训练。该算法的学习速度比传统的流行学习算法快得多,这得益于使用了包含多个函数的JAX库来减少我们的解决方案的执行时间。仿真结果表明,基于极限学习机的手写体识别系统降低了计算量,缩短了整个识别过程所需的时间。此外,所开发的ELM在识别精度方面达到了很高的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Extreme Learning Machine for Berber Handwritten Latin Script
This article deals with the problem of Berber handwritten character recognition using Extreme Learning Machine. This paradigm has gained significant attention in pattern recognition field thanks to its efficient learning speed and its high accuracy. In this paper, we have used a fast Extreme Learning Machine to recognize efficiently the Latin Berber characters. So, the proposed ELM has been trained over a Berber-MNIST dataset containing images of Amazigh alphabets. This algorithm learns much faster than traditional popular learning algorithms thanks to the use of JAX library which contains several functions to reduce the execution time of our solution. The simulation results show that the handwritten recognition system based on our developed extreme learning machine decreases computational cost and reduces the time required for the whole recognition process. Furthermore, the developed ELM achieves a high performance in terms of recognition accuracy.
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