Extracting Pathlets FromWeak Tracking Data

Kevin Streib, James W. Davis
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引用次数: 5

Abstract

We present a novel framework for extracting “pathlets”from tracking data. A pathlet is defined as a motion regionthat contains tracks having the same origin and destinationin the scene and that are temporally correlated. The proposedmethod requires only weak tracking data (multiplefragmented tracks per target). We employ a probabilisticstate space representation to construct a Markovian transitionmodel and estimate the scene entry/exit locations. Theresulting model is treated as a set of vertices in a graph anda similarity matrix is built which describes broader nonlocalrelationships between states. A Spectral Clusteringapproach is then used to automatically extract the pathletsof the scene. We present experimental results from scenes ofvarying difficulty and compare against other approaches.
从弱跟踪数据中提取路径
我们提出了一种从跟踪数据中提取“路径”的新框架。路径被定义为一个运动区域,其中包含在场景中具有相同原点和目的地且时间相关的轨迹。所提出的方法只需要弱跟踪数据(每个目标有多个碎片跟踪)。我们采用概率状态空间表示来构建马尔可夫过渡模型并估计场景的入口/出口位置。所得到的模型被视为图中的一组顶点,并建立了描述状态之间更广泛的非局部关系的相似矩阵。然后使用光谱聚类方法自动提取场景中的路径。我们给出了不同难度场景的实验结果,并与其他方法进行了比较。
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