Temporal Dynamic Graph LSTM for Action-driven Video Object Detection

2017 IEEE International Conference on Computer Vision (ICCV)(2017)

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摘要
In this paper, we investigate a weakly-supervised object detection framework. Most existing frameworks focus on using static images to learn object detectors. However, these detectors often fail to generalize to videos because of the existing domain shift. Therefore, we investigate learning these detectors directly from boring videos of daily activities. Instead of using bounding boxes, we explore the use of action descriptions as supervision since they are relatively easy to gather. A common issue, however, is that objects of interest that are not involved in human actions are often absent in global action descriptions known as "missing label". To tackle this problem, we propose a novel temporal dynamic graph Long Short-Term Memory network (TD-Graph LSTM). TD-Graph LSTM enables global temporal reasoning by constructing a dynamic graph that is based on temporal correlations of object proposals and spans the entire video. The missing label issue for each individual frame can thus be significantly alleviated by transferring knowledge across correlated objects proposals in the whole video. Extensive evaluations on a large-scale daily-life action dataset (i.e., Charades) demonstrates the superiority of our proposed method. We also release object bounding-box annotations for more than 5,000 frames in Charades. We believe this annotated data can also benefit other research on video-based object recognition in the future.
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关键词
existing domain shift,daily activities,bounding boxes,action descriptions,supervision,common issue,human actions,TD-Graph LSTM,global temporal reasoning,temporal correlations,missing label issue,correlated objects proposals,daily-life action dataset,object recognition,weakly-supervised object detection framework,existing frameworks,static images,temporal dynamic graph LSTM,object detector learning,action-driven video object detection,boring videos,global action description,novel temporal dynamic graph long short-term memory network,large-scale daily-life action dataset,object bounding-box annotations,Charades
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