Classifying Handwritten Numbers Using Convolutional Neural Networks

Authors

  • Sizhe Fan

DOI:

https://doi.org/10.62051/ijcsit.v3n2.17

Keywords:

MNIST, CNN, ResNet18

Abstract

A convolutional neural network (CNN) is one of the most significant networks in the deep learning field. Since CNN has made impressive achievements in many areas, including but not limited to computer vision and natural language processing, CNNs have attracted much attention from both industry and academia in the past few years. The problem of gradient vanishing or gradient explosion tends to get worse as the depth of the model increases. In traditional neural network structures, especially in the field of image processing, since a large number of convolutional and pooling layers need to be utilized to extract features layer by layer, the model performance tends to degrade and other unfavorable situations as the number of layers accumulates. In order to solve the gradient problem that occurs during the training process of deep neural networks, the concept of residual connectivity has emerged.

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References

Lyu, He, et al. "Advances in neural information processing systems." Advances in neural information processing systems 32 (2019).

Maren, Alianna J., Craig T. Harston, and Robert M. Pap. Handbook of neural computing applications. Academic Press, 2014.

Li, Zewen, et al. "A survey of convolutional neural networks: analysis, applications, and prospects." IEEE transactions on neural networks and learning systems 33.12 (2021): 6999-7019.

Gu, Jiuxiang, et al. "Recent advances in convolutional neural networks." Pattern recognition 77 (2018): 354-377.

O'shea, Keiron, and Ryan Nash. "An introduction to convolutional neural networks." arxiv preprint arxiv:1511.08458 (2015).

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Published

19-07-2024

Issue

Section

Articles

How to Cite

Fan, S. (2024). Classifying Handwritten Numbers Using Convolutional Neural Networks. International Journal of Computer Science and Information Technology, 3(2), 151-156. https://doi.org/10.62051/ijcsit.v3n2.17