Representation Learning by Learning to Count

ICCV 2017 Mehdi NorooziHamed PirsiavashPaolo Favaro

We introduce a novel method for representation learning that uses an artificial supervision signal based on counting visual primitives. This supervision signal is obtained from an equivariance relation, which does not require any manual annotation... (read more)

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