Unsupervised Deep Domain Adaptation for Pedestrian Detection

9 Feb 2018Lihang LiuWeiyao LinLisheng WuYong YuMichael Ying Yang

This paper addresses the problem of unsupervised domain adaptation on the task of pedestrian detection in crowded scenes. First, we utilize an iterative algorithm to iteratively select and auto-annotate positive pedestrian samples with high confidence as the training samples for the target domain... (read more)

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