We propose a novel online multi-object visual tracker using a Gaussian mixture Probability Hypothesis Density (GM-PHD) filter and deep appearance learning. The GM-PHD filter has a linear complexity with the number of objects and observations while estimating the states and cardinality of time-varying number of objects, however, it is susceptible to miss-detections and does not include the identity of objects. We use visual-spatio-temporal information obtained from object bounding boxes and deeply learned appearance representations to perform estimates-to-tracks data association for target labeling as well as formulate an augmented likelihood and then integrate into the update step of the GM-PHD filter. We also employ additional unassigned tracks prediction after the data association step to overcome the susceptibility of the GM-PHD filter towards miss-detections caused by occlusion. Extensive evaluations on MOT16, MOT17 and HiEve benchmark datasets show that our tracker significantly outperforms several state-of-the-art trackers in terms of tracking accuracy and identification.
翻译:我们建议使用高斯混合混合物的多球视觉跟踪器,利用高斯混合假冒密度(GM-PHD)过滤器,进行新型的在线多球视觉跟踪器。 GM-PHD过滤器对天体和观察物体的数量具有线性复杂性,同时估计时间变化天体的状态和基本特征,但是,它很容易被误测,不包括物体的身份。我们使用从物体捆绑盒和深知的外观显示器获得的视觉空间实时信息,对目标标签进行估计到轨道的数据组合,并拟订更多的可能性,然后纳入GM-PHD过滤器的更新步骤。我们还在数据关联步骤之后采用额外的未指定的轨道预测,以克服GM-PHD过滤器对隔热造成误测的可能性。对MOT16、MOT17和HiEve基准数据集的广泛评价显示,我们的跟踪器在跟踪准确性和识别方面大大超出数个州级跟踪器。