Tracklet与在线目标特定度量学习的关联

B. Wang, G. Wang, K. Chan, Li Wang
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引用次数: 110

摘要

本文提出了一种基于网络流优化的在线目标特定度量学习方法,用于长期多人跟踪的轨迹片段关联。与其他网络流公式不同的是,我们的网络中的每个节点代表一个轨迹,每个边代表相邻轨迹属于同一轨迹的可能性,这是由我们提出的亲和力评分衡量的。在我们的方法中,学习目标特定的相似性度量,从而产生基于外观的模型,用于tracklet亲和估计。基于轨迹的轨迹通过使用学习到的度量来考虑外观一致性并识别可靠的轨迹来改进。然后使用可靠的轨迹来重新学习这些指标,以计算轨迹关联分数。然后通过网络流优化获得长期轨迹。遮挡和漏检由轨迹完成步骤处理。该方法在目标空间距离较近或被其他目标完全遮挡的情况下也能有效地进行长期跟踪。我们在几个公共数据集上验证了我们提出的框架,并表明它优于几种最先进的方法。
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Tracklet Association with Online Target-Specific Metric Learning
This paper presents a novel introduction of online target-specific metric learning in track fragment (tracklet) association by network flow optimization for long-term multi-person tracking. Different from other network flow formulation, each node in our network represents a tracklet, and each edge represents the likelihood of neighboring tracklets belonging to the same trajectory as measured by our proposed affinity score. In our method, target-specific similarity metrics are learned, which give rise to the appearance-based models used in the tracklet affinity estimation. Trajectory-based tracklets are refined by using the learned metrics to account for appearance consistency and to identify reliable tracklets. The metrics are then re-learned using reliable tracklets for computing tracklet affinity scores. Long-term trajectories are then obtained through network flow optimization. Occlusions and missed detections are handled by a trajectory completion step. Our method is effective for long-term tracking even when the targets are spatially close or completely occluded by others. We validate our proposed framework on several public datasets and show that it outperforms several state of art methods.
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