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separate modalities

Experience CIFAR-MNIST

Train to disentanglement MNIST (or CIFAR-10) information from a dataset than combines CIFAR-10 and MNIST images. Experiences :

  • Freeze or not the weak encoder during strong encoder training
  • Replace the weak and strong-common encoders by a unique encoder
  • Try to compute jem loss between strong-specific & weak and/or strong-specific & strong-common
  • Train a decoder to retrieve the weak modality (MNIST is this case)

Experiences on neuro-imaging

Train to separate specific-VBM information to information common between VBM and sulcus skeletons