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GradMix: Multi-source Transfer across Domains and Tasks
[article]
2020
arXiv
pre-print
The computer vision community is witnessing an unprecedented rate of new tasks being proposed and addressed, thanks to the deep convolutional networks' capability to find complex mappings from X to Y. The advent of each task often accompanies the release of a large-scale annotated dataset, for supervised training of deep network. However, it is expensive and time-consuming to manually label sufficient amount of training data. Therefore, it is important to develop algorithms that can leverage
arXiv:2002.03264v1
fatcat:oycbi6ubsjd4beb4gd6huqeb5u