Detecting Temporally Consistent Objects in Videos through Object Class Label Propagation

2016 IEEE Winter Conference on Applications of Computer Vision (WACV)(2016)

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摘要
Object proposals for detecting moving or static video objects need to address issues such as speed, memory complexity and temporal consistency. We propose an efficient Video Object Proposal (VOP) generation method and show its efficacy in learning a better video object detector. A deep-learning based video object detector learned using the proposed VOP achieves state-of-the-art detection performance on the Youtube-Objects dataset. We further propose a clustering of VOPs which can efficiently be used for detecting objects in video in a streaming fashion. As opposed to applying per-frame convolutional neural network (CNN) based object detection, our proposed method called Objects in Video Enabler thRough LAbel Propagation (OVERLAP) needs to classify only a small fraction of all candidate proposals in every video frame through streaming clustering of object proposals and class-label propagation. Source code will be made available soon.
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关键词
object class label propagation,video object proposal,moving video object detection,static video object detection,memory complexity,temporal consistency,VOP generation method,deep-learning based video object detector,Youtube-objects dataset,per-frame convolutional neural network,CNN based object detection,objects in video enabler through label propagation,OVERLAP,video frame,streaming,VOP clustering
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