A deep neural networks for images using CNN algorithm.

Overview

Example-CNN-Project

This is a simple project showing how to implement deep neural networks using CNN algorithm.
The dataset is taken from this link: https://www.kaggle.com/prasunroy/natural-images

Additional Notes

The model is not really accurate because the dataset was not a generalized dataset, But this code is a good example of how to implement deep learning with tensorflow and also how to load the model.

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