Motion-Based Weak Supervision for Video Parsing with Application to Colonoscopy

Kelner, Ori, Weinstein, Or, Rivlin, Ehud, Goldenberg, Roman

arXiv.org Artificial Intelligence 

We propose a two-stage unsupervised approach for parsing videos into phases. We use motion cues to divide the video into coarse segments. Noisy segment labels are then used to weakly supervise an appearance-based classifier. We show the effectiveness of the method for phase detection in colonoscopy videos.

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