具有排序机制的时间一致性对象跟踪器

Yueen Hou, Ping Ye, Wei Zeng
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引用次数: 0

摘要

视觉跟踪是机器人控制领域的一个重要研究方向。然而,开发一种在复杂场景下具有鲁棒性的目标跟踪器仍然是一项具有挑战性的工作。本文提出了一种基于局部稀疏表示的结构残差一致排序跟踪器。在粒子滤波框架中,候选目标通过局部稀疏字典进行线性组合。该算法利用时间一致性,建立残差一致性项来约束稀疏表示的目标函数。采用对齐池化算法获得包含候选对象相似信息的池化特征。为了进一步增强鲁棒性,我们开发了残差分数来评估候选对象属于目标的可能性。针对残差分数和聚类特征的不同性质,提出了一种融合残差分数和聚类特征的排序机制。此外,字典更新方案将增量子空间学习和稀疏表示相结合,利用预测目标的排序结果来决定收集哪些预测目标进行字典更新。最后,提出的跟踪器在6个具有挑战性的视频序列上对6个最先进的跟踪器表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporal consistency object tracker with ranking mechanism
Visual tracking is important in the field of robotic controlling. However, developing a object tracker, which is robust in complex scenarios, is still a challenging work. In the paper, we propose a novel structural local sparse representation based residual error consistent ranking tracker. In the particle filter framework, candidate targets are linearly combined by a local sparse dictionary. By exploiting temporal consistency, the proposed algorithm develops a residual error consistency term to constraint the objective function of sparse representation. The alignment-pooling algorithm is used to obtain pooled features which contain similarity information of candidates. For further robustness, we develop residual error scores to evaluate the likelihood of candidates belonging to targets. For different natures of the residual error scores and pooled features, a ranking mechanism is proposed to fuse them. Furthermore, the dictionary updating scheme, which combines incremental subspace learning and sparse representation together, uses ranking results of predicted targets to decide which of the predicted targets are collected for dictionary updating. Finally, the proposed tracker performs favorably against 6 state-of-the-art trackers on 6 challenging video sequences.
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