Spatiotemporal KSVD Dictionary Learning for Online Multi-target Tracking

H. Manh, G. Alaghband
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引用次数: 4

Abstract

In this paper, we present a new spatiotemporal discriminative KSVD dictionary algorithm (STKSVD) for learning target appearance in online multi-target tracking system. Different from other classification/recognition tasks (e.g. face, image recognition), learning target's appearance in online multi-target tracking is impacted by factors such as: posture/articulation changes, partial occlusion by background scene or other targets, background changes (human detection bounding box covers both human parts and part of the scene), etc. However, we observe that these variations occur gradually relative to spatial and temporal dynamics. We characterize the spatial and temporal information between target's samples through a new STKSVD appearance learning algorithm to better discriminate targets. Our STKSVD method is able to learn discriminative sparse code, linear classifier parameters, and minimize reconstruction error in single optimization system. Our appearance learning algorithm and tracking framework employs two different methods of calculating appearance similarity score in each stage of a two-stage association: a linear classifier in the first stage, and minimum residual errors in the second stage. The results tested using 2DMOT2015 dataset and its public Aggregated Channel Features (ACF) human detection for all comparisons show that our method outperforms the existing related learning methods.
面向在线多目标跟踪的时空KSVD字典学习
本文提出了一种新的用于在线多目标跟踪系统中目标外观学习的时空判别KSVD字典算法。与其他分类/识别任务(如人脸、图像识别)不同,在线多目标跟踪中学习目标的外观受到以下因素的影响:姿势/发音变化、背景场景或其他目标局部遮挡、背景变化(人体检测边界框既覆盖人体部分,也覆盖部分场景)等。然而,我们观察到这些变化相对于空间和时间动态是逐渐发生的。我们通过一种新的STKSVD外观学习算法来表征目标样本之间的时空信息,以更好地识别目标。我们的STKSVD方法能够学习判别稀疏码、线性分类器参数,并且在单个优化系统中重构误差最小。我们的外观学习算法和跟踪框架在两阶段关联的每个阶段使用两种不同的方法来计算外观相似性得分:第一阶段使用线性分类器,第二阶段使用最小残差。使用2DMOT2015数据集及其公共聚合通道特征(ACF)人工检测进行所有比较的测试结果表明,我们的方法优于现有的相关学习方法。
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