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Color Aided Motion-Segmentation and Object Tracking for Video Sequences Semantic Analysis

机译:用于视频序列语义分析的彩色辅助运动分割和对象跟踪

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The high rates at which digital multimedia is being generated and used makes it necessary to develop systems that can process it in an efficient manner. This can be achieved by extracting semantics from processing the video's low-level information. We present a novel algorithm which fuses color and motion information, in order to extract semantics from the video sequence. The motion estimates are processed statistically to give areas of activity in the video. Color segmentation is applied to these areas, and also to their complementary regions in each frame, in order to achieve the moving object segmentation. The extracted color layers in the activity and background areas are compared using the earth mover's distance (EMD), and a novel method, which we introduce, and which is based on a likelihood ratio test (LRT). The segmentation results of our LRT-based approach are shown to be more robust than the EMD results, and both methods are shown to be more accurate than the existing combined color-motion approaches. Furthermore, the LRT method allows the retrieval of additional semantics, namely of "maps" that indicate with what likelihood a pixel belongs to a moving object. The areas of activity can be used to retrieve semantics for the kind of activity taking place. The color-aided segmentation of the moving entities provides a full description of their appearance, so it can be used, for example, to classify the video based on the objects in it. Experiments with real sequences show that this method leads to accurate results and useful semantics.
机译:数字多媒体的生成和使用率很高,因此有必要开发一种可以有效处理数字多媒体的系统。这可以通过从处理视频的低层信息中提取语义来实现。我们提出了一种融合颜色和运动信息的新颖算法,以便从视频序列中提取语义。对运动估计进行统计处理,以提供视频中的活动区域。为了实现运动对象的分割,将色彩分割应用于这些区域以及每一帧中的互补区域。使用推土机距离(EMD)和我们引入的一种基于似然比检验(LRT)的新颖方法,比较了活动区域和背景区域中提取的颜色层。我们的基于LRT的方法的分割结果显示比EMD结果更健壮,并且两种方法都比现有的组合色运动方法更准确。此外,LRT方法允许检索其他语义,即“地图”的语义,这些语义指示像素属于移动对象的可能性。活动区域可用于检索发生的活动类型的语义。运动实体的颜色辅助分割提供了其外观的完整描述,因此可以用于例如基于其中的对象对视频进行分类。实际序列的实验表明,该方法可产生准确的结果和有用的语义。

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