Changzhi Lv, Changdong Shu, Yingjun Lv, Chunsheng Song
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引用次数: 1
Abstract
Modern multiple object tracking has made great progress of the JDE model. Because the JDE model uses a shared model, its calculation speed and accuracy have been greatly improved. But using the same network to predict detection and re- ID will affect each other when the network feedback, thereby reducing the MOTA (Evaluation Measures for MOTChallenge) accuracy, and when the network detects the object and ID information separately, it will greatly increase the computing time. We propose a new MOT method named ParallelMOT, which uses two different branches to reduce the mutual influence of network feedback, and uses object information fusion to improve the feature extraction of the object, and uses a new network model to predict embedding for achieving better MOT accuracy.
现代多目标跟踪在JDE模型上取得了很大的进步。由于JDE模型使用了共享模型,其计算速度和精度都得到了很大的提高。但使用同一网络进行预测检测和重识别时,网络反馈会相互影响,从而降低MOTA (Evaluation Measures for MOTChallenge)的精度,并且当网络分别检测对象和ID信息时,会大大增加计算时间。我们提出了一种新的MOT方法——并行MOT,该方法使用两个不同的分支来减少网络反馈的相互影响,使用目标信息融合来改进目标的特征提取,并使用新的网络模型来预测嵌入以获得更好的MOT精度。