If we look at the list of available models in Keras as shown here we see that almost all of them are instantiated with weights='imagenet'. For instance:

model = VGG16(weights='imagenet', include_top=False)

Why always imagenet? is it because it is the baseline? If not, what are the other options available?

Thank you

  • 1
    It's advisable to load some weights because architecture trained on imagenet architecture will have prior knowledge about basic shapes. Then, later layers are being keep trainable so that it can adjust to your dataset. Imagenet is the oldest most diverse dataset available, that's why. You can load the weights to None too. Read the Github file for keras models applications. Jul 5, 2020 at 12:44

1 Answer 1


Imagenet is a defacto standard for images classification. A yearly contest is run with millions of training images in 1000 categories. The models used in the imagenet classification competitions are measured against each other for performance. Therefore it provides a "standard" measure for how good a model is for image classification. So many often used transfer learning model models use the imagenet weights. Your model if you are using transfer learning can be customized for your application by adding additional layers to the model. You do not have to use the imagenet weighst but it generally is beneficial as it helps the model converge in less epochs. I use them but I also set all layers to be trainable which helps adapt the weights of the model to your application.

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