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首页> 外文期刊>EURASIP journal on advances in signal processing >Lightweight Object Tracking in Compressed Video Streams Demonstrated in Region-of-Interest Coding
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Lightweight Object Tracking in Compressed Video Streams Demonstrated in Region-of-Interest Coding

机译:感兴趣区域编码中展示的压缩视频流中的轻量目标跟踪

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Video scalability is a recent video coding technology that allows content providers to offer multiple quality versions from a single encoded video file in order to target different kinds of end-user devices and networks. One form of scalability utilizes the region-of-interest concept, that is, the possibility to mark objects or zones within the video as more important than the surrounding area. The scalable video coder ensures that these regions-of-interest are received by an end-user device before the surrounding area and preferably in higher quality. In this paper, novel algorithms are presented making it possible to automatically track the marked objects in the regions of interest. Our methods detect the overall motion of a designated object by retrieving the motion vectors calculated during the motion estimation step of the video encoder. Using this knowledge, the region-of-interest is translated, thus following the objects within. Furthermore, the proposed algorithms allow adequate resizing of the region-of-interest. By using the available information from the video encoder, object tracking can be done in the compressed domain and is suitable for real-time and streaming applications. A time-complexity analysis is given for the algorithms proving the low complexity thereof and the usability for real-time applications. The proposed object tracking methods are generic and can be applied to any codec that calculates the motion vector field. In this paper, the algorithms are implemented within MPEG-4 fine-granularity scalability codec. Different tests on different video sequences are performed to evaluate the accuracy of the methods. Our novel algorithms achieve a precision up to 96.4 .
机译:视频可伸缩性是一种最新的视频编码技术,它允许内容提供商从单个编码的视频文件中提供多个质量版本,以针对不同类型的最终用户设备和网络。可伸缩性的一种形式是利用关注区域的概念,即将视频中的对象或区域标记为比周围区域重要的可能性。可伸缩视频编码器确保最终用户设备在周围区域之前并最好以更高的质量接收这些感兴趣的区域。在本文中,提出了新颖的算法,可以自动跟踪感兴趣区域中的标记对象。我们的方法通过检索在视频编码器的运动估计步骤中计算出的运动矢量来检测指定对象的整体运动。使用此知识,可以翻译关注区域,从而跟随其中的对象。此外,提出的算法允许适当调整感兴趣区域的大小。通过使用来自视频编码器的可用信息,可以在压缩域中完成对象跟踪,并且适用于实时和流式应用程序。对算法进行了时间复杂度分析,证明了算法的低复杂度以及实时应用的可用性。所提出的对象跟踪方法是通用的,可以应用于计算运动矢量场的任何编解码器。在本文中,这些算法是在MPEG-4细粒度可扩展性编解码器内实现的。对不同的视频序列执行不同的测试,以评估方法的准确性。我们新颖的算法可达到96.4的精度。

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