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Globally Optimum Multiple Object Tracking

机译:全局最佳多对象跟踪

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Robust and accurate tracking of multiple objects is a key challenge in video surveillance. Tracking algorithms generally suffer from either one or more of the following problems, excluding detection errors. First, objects can be incorrectly interpreted as one of the other objects in the scene. Second, interactions between objects, such as occlusions, may cause tracking errors. Third, globally-optimum tracking is hard to achieve since the combinatorial assignment problem is NP-Complete. We present a modified Multiple-Hypothesis Tracking algorithm, MHT, for globally optimum tracking of moving objects. The system defines five states for tracked objects: appear, disappear, track, split, and merge, and these states cover all the interactions of object pairs. After the detection of objects in the current frame, a resemblance matrix is computed for every object pair. We convert the two-dimensional resemblance matrix into a three-dimensional state-likelihood structure and use a MHT technique to solve the state-assignment problem in 3D. This prevents incorrect assignments due to local minima in the assignment process. Moreover, the method models occlusion cases with the split and merge states. Finally, this method approximates a globally optimum state assignment in polynomial time complexity.
机译:鲁棒和准确地跟踪多个对象是视频监控的关键挑战。跟踪算法通常会遇到以下一个或多个问题,但检测错误除外。首先,对象可能被错误地解释为场景中的其他对象之一。其次,对象之间的相互作用(例如遮挡)可能会导致跟踪错误。第三,由于组合分配问题是NP-Complete,因此很难实现全局最佳跟踪。我们提出了一种改进的多重假设跟踪算法MHT,用于对运动对象进行全局最优跟踪。系统为被跟踪对象定义了五个状态:出现,消失,跟踪,拆分和合并,这些状态涵盖了对象对的所有交互。在检测到当前帧中的对象后,将为每个对象对计算一个相似矩阵。我们将二维相似矩阵转换为三维状态似然结构,并使用MHT技术解决3D中的状态分配问题。这样可以防止由于分配过程中的局部最小值而导致错误分配。此外,该方法对具有分裂和合并状态的遮挡情况进行建模。最后,该方法在多项式时间复杂度中近似全局最优状态分配。

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