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Multi-class Multi-object Tracking Using Changing Point Detection

机译:使用更改点检测多级多对象跟踪

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This paper presents a robust multi-class multi-object tracking (MCMOT) formulated by a Bayesian filtering framework. Multi-object tracking for unlimited object classes is conducted by combining detection responses and changing point detection (CPD) algorithm. The CPD model is used to observe abrupt or abnormal changes due to a drift and an occlusion based spatiotemporal characteristics of track states. The ensemble of convolutional neural network (CNN) based object detector and Lucas-Kanede Tracker (KLT) based motion detector is employed to compute the likelihoods of foreground regions as the detection responses of different object classes. Extensive experiments are performed using lately introduced challenging benchmark videos; ImageNet VID and MOT benchmark dataset. The comparison to state-of-the-art video tracking techniques shows very encouraging results.
机译:本文介绍了由贝叶斯滤波框架制定的强大的多级多数对象跟踪(MCMOT)。通过组合检测响应和改变点检测(CPD)算法来进行无限对象类的多对象跟踪。 CPD模型用于观察由于漂移和基于轨道状态的闭塞的闭塞性的突然变化。基于卷积神经网络(CNN)的对象检测器和基于LUCAS-KANEDE跟踪器(KLT)的运动检测器的集合用于计算前景区域作为不同对象类的检测响应的似然。使用最近引入的具有挑战性的基准视频进行了广泛的实验; Imagenet Vid和MOT基准数据集。与最先进的视频跟踪技术的比较显示出非常令人鼓舞的结果。

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