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Online Multi-object Visual Tracking using a GM-PHD Filter with Deep Appearance Learning

机译:在线多对象视觉跟踪使用GM-PHD过滤器具有深度外观学习

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We propose a new online multi-object visual tracker based on a Gaussian mixture Probability Hypothesis Density (GM-PHD) filter in combination with a similarity Convolutional Neural Network (CNN). The GM-PHD filter estimates the states and cardinality of an unknown and time varying number of targets in the scene handling target birth, death, clutter (false alarms) and missing detections in a unified framework, and has a linear complexity with the number of targets. However, it lacks the identity of targets. We combine spatio-temporal and visual similarities obtained from object bounding boxes and deep CNN appearance features, respectively, to alleviate its shortcoming of labelling targets across frames. We apply this developed method for tracking multiple targets in video sequences acquired under varying environmental conditions and targets density using a tracking-by-detection approach. Finally, we carry out extensive experiments on Multiple Object Tracking 2016 (MOTI6) and 2017 (MOTI7) benchmark datasets and find out that our tracker significantly outperforms several state-of-the-art trackers in terms of tracking accuracy and precision.
机译:我们提出了一种基于高斯混合概率假设密度(GM-PHD)滤波器的新的在线多对象视觉跟踪器,与相似度卷积神经网络(CNN)组合。 GM-PHD过滤器估计现场处理目标出生,死亡,杂乱(假警报)和统一框架中缺少检测的现场未知和时间变化数量的状态和基数,并且具有线性复杂性目标。但是,它缺乏目标的身份。我们将从物体边界盒和深层CNN外观特征的相结合的时空和视觉相似度组合,以减轻跨越框架的标记目标的缺点。我们应用该开发方法,用于跟踪在不同环境条件下获取的视频序列中的多个目标,并使用跟踪逐方法靶向密度。最后,我们对2016年的多个物体跟踪(Moti6)和2017(Moti7)基准数据集进行了广泛的实验,并找出了我们的跟踪器在跟踪准确性和精度方面显着优于若干先进的跟踪器。

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