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Compact discriminative object representation via weakly supervised learning for real-time visual tracking

机译:通过弱监督学习进行紧凑的区分对象表示,以进行实时视觉跟踪

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摘要

Object representations are of great importance for robust visual tracking. Although the high-dimensional representation can effectively encode the input data with more information, exploiting it in a real-time tracking system would be intractable and infeasible due to the high computational cost and memory requirements. In this study, the authors propose a object representation to achieve both good tracking accuracy and efficiency. An ensemble of weak training sets is generated based on the self-representative ability of tracking samples, which is applied to learn discriminative functions. Each candidate is represented by the concatenation of project values on all the weak training sets. Tracking is then carried out within a Bayesian inference framework where the classification score of the support vector machine is used to construct the observation model. The evaluations on TB50 benchmark dataset demonstrate that the proposed algorithm is much more computationally efficient than the state-of-the-art methods with comparable accuracy.
机译:对象表示对于鲁棒的视觉跟踪非常重要。尽管高维表示可以用更多信息有效地编码输入数据,但是由于高计算成本和内存需求,在实时跟踪系统中进行利用将是棘手且不可行的。在这项研究中,作者提出了一种对象表示形式,以实现良好的跟踪精度和效率。基于跟踪样本的自我表示能力,生成一组弱训练集,用于学习判别函数。每个候选人都由所有弱训练集上的项目值的串联表示。然后在贝叶斯推理框架内进行跟踪,在该框架中,使用支持向量机的分类评分来构建观察模型。对TB50基准数据集的评估表明,与具有可比性的最新技术相比,该算法在计算效率上要高得多。

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