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首页> 外文期刊>IEEE Transactions on Image Processing >Bayesian Foreground and Shadow Detection in Uncertain Frame Rate Surveillance Videos
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Bayesian Foreground and Shadow Detection in Uncertain Frame Rate Surveillance Videos

机译:不确定帧率监控视频中的贝叶斯前景和阴影检测

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摘要

In in this paper, we propose a new model regarding foreground and shadow detection in video sequences. The model works without detailed a priori object-shape information, and it is also appropriate for low and unstable frame rate video sources. Contribution is presented in three key issues: 1) we propose a novel adaptive shadow model, and show the improvements versus previous approaches in scenes with difficult lighting and coloring effects; 2) we give a novel description for the foreground based on spatial statistics of the neighboring pixel values, which enhances the detection of background or shadow-colored object parts; 3) we show how microstructure analysis can be used in the proposed framework as additional feature components improving the results. Finally, a Markov random field model is used to enhance the accuracy of the separation. We validate our method on outdoor and indoor sequences including real surveillance videos and well-known benchmark test sets.
机译:在本文中,我们提出了一种有关视频序列中前景和阴影检测的新模型。该模型在没有详细的先验物体形状信息的情况下工作,并且还适用于帧速率低且不稳定的视频源。贡献体现在三个关键问题上:1)我们提出了一种新颖的自适应阴影模型,并在光照和着色效果较差的场景中展示了与以前方法相比的改进; 2)我们基于相邻像素值的空间统计量对前景进行了新颖的描述,从而增强了对背景或阴影色物体部分的检测; 3)我们展示了如何在提议的框架中使用微结构分析作为附加的特征部件来改善结果。最后,使用马尔可夫随机场模型来提高分离的准确性。我们在室外和室内序列上验证了我们的方法,包括真实的监控视频和著名的基准测试集。

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