手写体字符识别的双语优势:波斯和拉丁文字的深度学习研究

Zahra Sadeghi, Alberto Testolin, M. Zorzi
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引用次数: 1

摘要

在本研究中,我们通过计算模拟的方法研究了掌握多种文字对手写字符识别的影响。特别是,我们在两个不同的手写字符数据集上训练了一组深度神经网络:HODA数据集,它是手写波斯语数字的图像集合,以及MNIST数据集,它包含拉丁手写数字。我们模拟了母语个体(在单一数据集上训练)和双语个体(在两个数据集上训练),并比较了他们在不同噪声条件下执行的识别任务中的表现。我们的研究结果表明,与单语网络相比,双语网络在手写数字识别方面表现优异,从而表明掌握多种语言可能有助于跨相似领域的知识转移。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bilingualism advantage in handwritten character recognition: A deep learning investigation on Persian and Latin scripts
In this study, we investigated the effects of mastering multiple scripts in handwritten character recognition by means of computational simulations. In particular, we trained a set of deep neural networks on two different datasets of handwritten characters: the HODA dataset, which is a collection of images of handwritten Persian digits, and the MNIST dataset, which contains Latin handwritten digits. We simulated native language individuals (trained on a single dataset) as well as bilingual individuals (trained on both datasets), and compared their performance in a recognition task performed under different noisy conditions. Our results show the superior performance of bilingual networks in handwritten digit recognition in comparison to the monolingual networks, thereby suggesting that mastering multiple languages might facilitate knowledge transfer across similar domains.
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