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CATS: Co-saliency Activated Tracklet Selection for Video Co-localization

机译:猫:视频共同定位的共同显着激活的Roadion选择

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Video co-localization is the task of jointly localizing common objects across videos. Due to the appearance variations both across the videos and within the video, it is a challenging problem to identify and track them without any supervision. In contrast to previous joint frameworks that use bounding box proposals to attack the problem, we propose to leverage co-saliency activated tracklets to address the challenge. To identify the common visual object, we first explore inter-video commonness, intra-video commonness, and motion saliency to generate the co-saliency maps. Object proposals of high objectness and co-saliency scores are tracked across short video intervals to build tracklets. The best tube for a video is obtained through tracklet selection from these intervals based on confidence and smoothness between the adjacent tracklets, with the help of dynamic programming. Experimental results on the benchmark YouTube Object dataset show that the proposed method outperforms state-of-the-art methods.
机译:视频共同定位是在视频中联合本地化的共同对象的任务。由于跨越视频和视频内的外观变化,在没有任何监督的情况下识别和跟踪它们是一个具有挑战性的问题。与先前的联合框架相比,使用边界框建议攻击问题,我们建议利用共同效力激活的Tracklet来解决挑战。为了识别公共视觉对象,我们首先探索视频间共同性,视频常见内容和运动显着性,以产生共同显着性图。在短视频间隔内跟踪高对象和共同显着性分数的对象提案,以构建轨迹。在动态编程的帮助下,通过基于相邻的TOARKLET之间的置信度和平滑来获得视频的最佳管。基准YouTube对象数据集的实验结果表明,该方法优于最先进的方法。

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