Learning Visual Features Under Motion Invariance

1 Sep 2019Alessandro BettiMarco GoriStefano Melacci

Humans are continuously exposed to a stream of visual data with a natural temporal structure. However, most successful computer vision algorithms work at image level, completely discarding the precious information carried by motion... (read more)

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