基于脉冲神经网络结构的孟加拉手写数字识别

Shantanu Bhattacharjee, Md Belal Uddin Sifat, Jayeed Bin Kibria, N. S. Pathan, Nur Mohammad
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摘要

孟加拉手写数字识别(BHDR)在OCR、投票机、邮政邮件分拣、安全系统、机器人和许多其他领域有着广泛的应用。BHDR可以使用各种流行的机器学习模型和深度神经网络架构来实现,其中峰值神经网络(SNN)在最近的研究中越来越受到关注。SNN是一种新兴的机器学习模型,它模仿了大脑实际神经元的自然处理机制。在本文中,SNN被应用于孟加拉手写体数字的识别,使用了一个名为NumtaDB的流行数据集。这些图像经过了SNN模型的各种预处理操作,使其能够更好地解释数字。分析了不同信噪比参数值下的性能。通过系统地改变参数,选择最佳的数值组合以获得最佳精度。与其他机器学习模型相比,该模型的准确率为91.36%,训练时间相对较快,计算资源相对较少。
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Recognition of Bengali Handwritten Digits Using Spiking Neural Network Architecture
Bengali Handwritten Digit Recognition (BHDR) has extensive applications in OCR, voting machines, postal mail sorting, security systems, robotics, and many other fields. BHDR can be performed using various popular machine learning models and deep neural network architectures among which Spiking Neural Network (SNN) is getting increasing attention in recent works. SNN is an emerging machine learning model which mimics the natural processing mechanism of actual neurons of the brain. In this paper, SNN is applied for the recognition of Bangla Handwritten Digits using a popular dataset called ‘NumtaDB’. The images have been brought through various preprocessing operations for the SNN model so that it could better interpret the digits. The performance is analyzed for different values of the parameters of SNN. By systematically changing the parameters, the best combination of the values is selected for getting optimal accuracy. The model gives an accuracy of 91.36% with a comparatively faster training time using fewer computational resources relative to other machine learning models.
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