Data Augmentation Techniques to Prevent Overfitting in Image Classification | Deep Learning Tutorial 26 (TensorFlow, Keras & Python)

This tutorial explains how data augmentation helps mitigate overfitting in CNNs when training data is limited, using techniques available in TensorFlow and Keras.

codebasics171.9K views31:33

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When we don't have enough training samples to cover diverse cases in image classification, often CNN might overfit. To address this we use a technique called data augmentation in deep learning. Data augmentation is used to generate new training samples from current training set using various transformations such as scaling, rotation, contrast change etc. In this video, we will classify flower images and see how our cnn model overfits. After that we will use data augmentation to generate new training samples and see how model performance improves. #dataaugmentation #dataaugmentationdeeplearning #addressoverfitting #cnn #deeplearningtutorial Do you want to learn technology from me? Check https://codebasics.io/ for my affordable video courses. Code: https://github.com/codebasics/deep-learning-keras-tf-tutorial/blob/master/17_data_augmentation/cnn_flower_image_classification_data_augmentations.ipynb Deep learning playlist: https://www.youtube.com/playlist?list=PLeo1K3hjS3uu7CxAacxVndI4bE_o3BDtO Machine learning playlist : https://www.youtube.com/playlist?list=PLeo1K3hjS3uvCeTYTeyfe0-rN5r8zn9rw   Discord: https://discord.gg/r42Kbuk Website: https://codebasics.io/ Facebook: https://www.facebook.com/codebasicshub Twitter: https://twitter.com/codebasicshub Linkedin: https://www.linkedin.com/company/codebasics/ DISCLAIMER: All opinions expressed in this video are of my own and not that of my employers'.

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171.9K

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Duration
31:33

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Published
Nov 1, 2020

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hd

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