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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >Temporal Unknown Incremental Clustering Model for Analysis of Traffic Surveillance Videos
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Temporal Unknown Incremental Clustering Model for Analysis of Traffic Surveillance Videos

机译:用于交通监控视频的时间未知增量聚类模型

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摘要

Optimized scene representation is an important characteristic of a framework for detecting abnormalities on live videos. One of the challenges for detecting abnormalities in live videos is real-time detection of objects in a non-parametric way. Another challenge is to efficiently represent the state of objects temporally across frames. In this paper, a Gibbs sampling-based heuristic model referred to as temporal unknown incremental clustering has been proposed to cluster pixels with motion. Pixel motion is first detected using optical flow and a Bayesian algorithm has been applied to associate pixels belonging to a similar cluster in subsequent frames. The algorithm is fast and produces accurate results in Theta(kn) time, where k is the number of clusters and n the number of pixels. Our experimental validation with publicly available data sets reveals that the proposed framework has good potential to open up new opportunities for real-time traffic analysis.
机译:优化的场景表示是用于检测实时视频异常的框架的重要特征。检测实时视频异常的挑战之一是以非参数方式实时检测对象。另一个挑战是有效地跨帧在时间上表示对象的状态。在本文中,提出了一种基于Gibbs采样的启发式模型,称为时间未知增量聚类,以对具有运动的像素进行聚类。首先使用光流检测像素运动,并且已经将贝叶斯算法应用于在后续帧中关联属于相似簇的像素。该算法速度很快,并且可以在Theta(kn)时间产生准确的结果,其中k是簇数,n是像素数。我们通过公开数据集进行的实验验证表明,该框架具有很大的潜力,可以为实时流量分析开辟新的机会。

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