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Finding Important People in a Video Using Deep Neural Networks with Conditional Random Fields

机译:使用具有条件随机场的深度神经网络在视频中查找重要人物

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Finding important regions is essential for applications, such as content-aware video compression and video retargeting to automatically crop a region in a video for small screens. Since people are one of main subjects when taking a video, some methods for finding important regions use a visual attention model based on face/pedestrian detection to incorporate the knowledge that people are important . However, such methods usually do not distinguish important people from passers-by and bystanders, which results in false positives. In this paper, we propose a deep neural network (DNN)-based method, which classifies a person into important or unimportant, given a video containing multiple people in a single frame and captured with a hand-held camera. Intuitively, important/unimportant labels are highly correlated given that corresponding people's spatial motions are similar. Based on this assumption, we propose to boost the performance of our important/unimportant classification by using conditional random fields (CRFs) built upon the DNN, which can be trained in an end-to-end manner. Our experimental results show that our method successfully classifies important people and the use of a DNN with CRFs improves the accuracy.
机译:查找重要区域对于应用程序至关重要,例如内容感知视频压缩和视频重新定向,以便为小屏幕自动裁剪视频中的区域。由于人是拍摄视频时的主要对象之一,因此一些用于查找重要区域的方法会使用基于脸部/行人检测的视觉注意模型来结合人们重要的知识。但是,这种方法通常无法将重要人物与过路人和旁观者区分开,从而导致误报。在本文中,我们提出了一种基于深度神经网络(DNN)的方法,该方法将一个人分为重要的或不重要的,给定一个包含多个人的视频,并且该视频由手持摄像机捕获。直观上,重要的/不重要的标签是高度相关的,因为相应的人的空间运动是相似的。基于此假设,我们建议通过使用基于DNN的条件随机字段(CRF)来提高我们重要/不重要分类的性能,该条件可以以端到端的方式进行训练。我们的实验结果表明,我们的方法成功地对重要人物进行了分类,并且将DNN与CRF一起使用可以提高准确性。

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