Bayesian-guided Label Mapping for Visual Reprogramming

Neural Information Processing Systems 

When adapting the output interface, label mapping methods transform the pretrained labels to downstream labels by establishing a gradient-free one-to-one correspondence between the two sets of labels.However, in this paper, we reveal that one-to-one mappings may overlook the complex relationship between pretrained and downstream labels.