this post was submitted on 27 Oct 2023
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Machine Learning
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I was going to say vision transformers still have the advantage as they are often pre-trained on unlabelled images. But now I think of it I don't see any reason why you couldn't pre-train a convolutional neural network in the same manner. Just seem to read about it more with vision transformers than CNNs
That's exactly what ConvNeXt V2 does
Masked Image Modelling objectives are just harder with CNNs compared to ViTs