Abstract:
DeepSmote uses the SMOTE technique in the latent space of an Autoencoder-
Decoder model to produce high fidelity images for imbalanced data. But it is be
limited by 2 essential artillery: over-fitting the data and a lack of continuity of the
latent space thus giving bad results. To overcome this, a number of regularized
autoencoders have been proposed. Furthermore, the latent space was oversampled
using a variety of approaches. Finally, a new method is a weighted calibration to
the latent space of minority classes and has proven to be pretty accurate compared
to other tested methods.