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Ensemble Tracking Based on Diverse Collaborative Framework With Multi-Cue Dynamic Fusion

机译:基于多种Cue动态融合的不同协作框架的集合跟踪

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摘要

Tracking with deep neural networks has been verified to arrive at a new level accuracy in many challenging scenarios, but the tracking robustness has been still challenged by model singularity and self-learning loop mechanism. As a promising solution for the limitations, to ensemble diverse tracking strategies into a highly-interactive framework has shown a potential effectiveness in recent studies. In this work, a collaborative tracking framework is proposed by exploiting both discriminative correlation filters and deep classifiers into an ensembling framework. With a multi-cue dynamic fusion scheme performed on all the ensembled members' outputs, a robust long-term tracking can be achieved by calculating the optimal robustness scores based on a dynamic weighted sum of multi-cue metrics. Meanwhile, the obtained reliable and diverse training samples are also utilized to adaptively update the tracker in each branch with heuristic frequency, which is able to alleviate the training samples' contamination and model corruption. Experiments on the OTB-2015, Temple color 128, UAV123, VOT2016, and VOT2018 benchmark datasets have shown superior performance in comparison to other state-of-the-art tracking approaches.
机译:通过深度神经网络追踪已经验证以在许多具有挑战性的情况下以新的水平准确性到达,但跟踪稳健性仍然受到模型奇点和自学循环机制的挑战。作为局限性的有希望的解决方案,将各种跟踪策略集成到高度交互框架中,在最近的研究中表明了潜在的有效性。在这项工作中,通过利用鉴别的相关滤波器和深度分类器来提出了一种协作跟踪框架。利用在所有集成的构件输出上执行的多线CUE动态融合方案,可以通过基于多功能度量的动态加权总和计算最佳鲁棒性分数来实现稳健的长期跟踪。同时,所获得的可靠和多样化的训练样本也用于自适应地以启发式频率在每个分支中自适应地更新跟踪器,能够缓解训练样本的污染和模型腐败。与其他最先进的跟踪方法相比,对OTB-2015,Temple Color 128,UAG123,VOT2016和VOT2018基准数据集的实验表明了卓越的性能。

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