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Online Multi-target Tracking by Large Margin Structured Learning

机译:大型边缘结构学习的在线多目标跟踪

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We present an online data association algorithm for multi-object tracking using structured prediction. This problem is formulated as a bipartite matching and solved by a generalized classification, specifically, Structural Support Vector Machines (S-SVM). Our structural classifier is trained based on matching results given the similarities between all pairs of objects identified in two consecutive frames, where the similarity can be defined by various features such as appearance, location, motion, etc. With an appropriate joint feature map and loss function in the S-SVM, finding the most violated constraint in training and predicting structured labels in testing are modeled by the simple and efficient Kuhn-Munkres (Hungarian) algorithm in a bipartite graph. The proposed structural classifier can be generalized effectively for many sequences without re-training. Our algorithm also provides a method to handle entering/leaving objects, short-term occlusions, and misde-tections by introducing virtual agents-additional nodes in a bipartite graph. We tested our algorithm on multiple datasets and obtained comparable results to the state-of-the-art methods with great efficiency and simplicity.
机译:我们使用结构化预测介绍了一种用于多对象跟踪的在线数据关联算法。该问题被配制为双链匹配,并通过广义分类,具体地,结构支持向量机(S-SVM)解决。我们的结构分类器基于匹配结果训练,给出了在两个连续帧中识别的所有对象之间的相似性,其中相似度可以由诸如外观,位置,运动等的各种特征来定义,具有适当的联合特征图和丢失在S-SVM中的功能,在测试中找到最违反的训练限制和预测测试中的结构化标签是通过双层图中的简单和高效的Kuhn-Munkres(匈牙利)算法的建模。所提出的结构分类器可以在没有重新训练的情况下有效地推广许多序列。我们的算法还提供了一种方法来通过在二分形图中引入虚拟代理 - 附加节点来处理进入/离开对象,短期闭塞和误态。我们在多个数据集上测试了我们的算法,并获得了具有卓越效率和简单的最先进的方法的可比较结果。

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