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Style-transfer GANs for bridging the domain gap in synthetic pose estimator training

By Pavel Rojtberg and others
Given the dependency of current CNN architectures on a large training set, the possibility of using synthetic data is alluring as it allows generating a virtually infinite amount of labeled training data. However, producing such data is a non-trivial task as current CNN architectures are sensitive to the domain gap... Show more
December 16, 2020
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Style-transfer GANs for bridging the domain gap in synthetic pose estimator training
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