: These features are typically extracted from deep layers of a neural network (such as the last fully connected layer of a pretrained VGGNet or similar architecture) to capture complex abstract information.
Deep Feature Consistent Variational Autoencoder - IEEE Xplore ace.AT_Blacked.1.var
: ACE introduces learnable gating mechanisms in the model's cross-attention layers, which are fine-tuned per concept using these deep feature representations. : These features are typically extracted from deep
In the context of the ACE framework, this "deep feature" likely represents a high-dimensional vector in the model's . Key aspects of these features include: ace.AT_Blacked.1.var
: The framework uses these features to improve the model's resistance to prompt-based attacks that try to bypass concept erasure.
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