Published September 8, 2022
| Version v1
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Comparison of CNN and MLP Artificial Neural Network Models for an Optical Character Recognition Test Case
Description
Abstract. Some different topologies and parameters for a convolutional artificial neural network (CNN) are compared with a Multi-Layer Perceptron (MLP) model, using the MNIST dataset for optical character recognition. Neural networks have been used to solve a wide variety of tasks that are difficult to solve using common rule-based programming, including computer vision and speech recognition [2]. This work used the TensorFlow library to compare some CNN models and select the two with the best accuracy among them, and was also compared with the MLP model.
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Miranda 2022 - CNN and MLP [pt-BR].pdf
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Related works
- Is supplement to
- https://github.com/efurlanm/351/ (URL)