A gaze driven fast-forward method for first-person videos

10 Jun 2020Alan Carvalho NevesMichel Melo SilvaMario Fernando Montenegro CamposErickson Rangel Nascimento

The growing data sharing and life-logging cultures are driving an unprecedented increase in the amount of unedited First-Person Videos. In this paper, we address the problem of accessing relevant information in First-Person Videos by creating an accelerated version of the input video and emphasizing the important moments to the recorder... (read more)

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