Enhanced Convolutional Neural Networks for MNIST Digit Recognition

Ahmed Gamal, Mohammed El Saeed, Mohanad Deif, Rania Elgohary
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Abstract

:This study addresses the ongoing pursuit of achieving optimal performance in digit recognition tasks, focusing on the widely studied MNIST dataset. Our motivation stems from the challenge of accurately classifying the remaining 1% of images, despite the relatively high 99% accuracy achieved by existing models. In this work, we present a simplified approach to convolutional neural network (CNN) architecture, aiming to streamline model complexity while maintaining or even enhancing performance. Unlike previous approaches, our methodology involves utilizing only two CNN layers with fewer filters, resulting in a reduction in model parameters and learning time. Through rigorous experimentation and evaluation, we demonstrate that our streamlined CNN architecture yields competitive results. Our findings underscore the importance of exploring alternative model architectures and optimization techniques to achieve state-of-the-art performance in digit recognition tasks.
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用于 MNIST 数字识别的增强型卷积神经网络
本研究以广泛研究的 MNIST 数据集为重点,探讨在数字识别任务中实现最佳性能的持续追求。尽管现有模型的准确率已达到相对较高的 99%,但要对剩余 1% 的图像进行准确分类仍是一项挑战。在这项工作中,我们提出了一种简化卷积神经网络(CNN)架构的方法,旨在简化模型的复杂性,同时保持甚至提高性能。与以往的方法不同,我们的方法只使用了两层卷积神经网络和较少的滤波器,从而减少了模型参数和学习时间。通过严格的实验和评估,我们证明了我们的简化 CNN 架构能产生有竞争力的结果。我们的研究结果强调了探索替代模型架构和优化技术的重要性,以便在数字识别任务中实现最先进的性能。
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