Multi-Object Tracking (MOT) has gained extensive attention in recent years due to its potential applications in traffic and pedestrian detection. We note that tracking by detection may suffer from errors generated by noise detectors, such as an imprecise bounding box before the occlusions, and observed that in most tracking scenarios, objects tend to move and lost within specific locations. To counter this, we present a novel tracker to deal with the bad detector and occlusions. Firstly, we proposed a location-wise sub-region recognition method which equally divided the frame, which we called mesh. Then we proposed corresponding location-wise loss management strategies and different matching strategies. The resulting Mesh-SORT, ablation studies demonstrate its effectiveness and made 3% fragmentation 7.2% ID switches drop and 0.4% MOTA improvement compared to the baseline on MOT17 datasets. Finally, we analyze its limitation on the specific scene and discussed what future works can be extended.
翻译:多物体跟踪(MOT)近年来因其在交通和行人探测方面的潜在应用而引起广泛关注。我们注意到,通过探测进行跟踪可能因噪音探测器产生的错误而受到影响,例如在隔离前的不精确捆绑盒,我们注意到,在大多数跟踪假设中,物体往往在特定地点移动和丢失。对此,我们提出了一个新的追踪器,以处理不良的探测器和隔离。首先,我们提议了一种对位置明智的分区域识别方法,该方法对框架进行相等的分割,我们称之为网状。然后我们提出了相应的地点明智的损失管理策略和不同的匹配策略。由此产生的Mesh-SORT、断层研究显示了其有效性,使3%的碎裂7.2%的ID开关下降,0.4%的MOTA改进与MO17数据集的基线相比。最后,我们分析了其在特定场上的限制,并讨论了未来工程的扩展。</s>