The CenterTrack tracking algorithm achieves state-of-the-art tracking performance using a simple detection model and single-frame spatial offsets to localize objects and predict their associations in a single network. However, this joint detection and tracking method still suffers from high identity switches due to the inferior association method. To reduce the high number of identity switches and improve the tracking accuracy, in this paper, we propose to incorporate a simple tracked object bounding box and overlapping prediction based on the current frame onto the CenterTrack algorithm. Specifically, we propose an Intersection over Union (IOU) distance cost matrix in the association step instead of simple point displacement distance. We evaluate our proposed tracker on the MOT17 test dataset, showing that our proposed method can reduce identity switches significantly by 22.6% and obtain a notable improvement of 1.5% in IDF1 compared to the original CenterTrack's under the same tracklet lifetime. The source code is released at https://github.com/Nanyangny/CenterTrack-IOU.
翻译:CentralTrack 跟踪算法利用简单的探测模型和单一框架空间抵消实现最新跟踪性能,将物体本地化,并预测其在一个网络中的关联。然而,由于联系方法低劣,这种联合检测和跟踪方法仍然受到高身份开关的影响。为了减少高身份开关并改进跟踪准确性,我们提议在本文中根据CentralTrack 算法的现有框架,纳入一个简单追踪的物体捆绑框和重叠预测。具体地说,我们提议在联系步骤中用一个跨区对联盟的距离成本矩阵,而不是简单的点移位距离。我们评估了我们在MOT17测试数据集上提议的跟踪器,表明我们拟议的方法可以显著减少身份开关22.6%,而且与CentrentTrack的寿命期相比,在以色列国防军1中显著改进了1.5%。源代码公布在https://github.com/nanyanangny/Centrack-IOU。