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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >MeMu: Metric correlation Siamese network and multi-class negative sampling for visual tracking
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MeMu: Metric correlation Siamese network and multi-class negative sampling for visual tracking

机译:MEMU:测量相关暹罗网络和多级阴性采样,用于视觉跟踪

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摘要

Despite the great success in the computer vision field, visual tracking is still a challenging task. The main obstacle is that the target object often suffers from interference, such as occlusion. As most Siamese network-based trackers mainly sample image patches of target objects for training, the tracking algorithm lacks sufficient information about the surrounding environment. Besides, many Siamese network-based tracking algorithms build a regression only with the target object samples without considering the relationship between target and background, which may deteriorate the performance of trackers. In this paper, we propose a metric correlation Siamese network and multi-class negative sampling tracking method. For the first time, we explore a sampling approach that includes three different kinds of negative samples: virtual negative samples for pre-learning the potential occlusion situation, boundary negative samples to cope with potential tracking drift, and context negative samples to cope with potential incorrect positioning. With the three kinds of negative samples, we also propose a metric correlation method to train a correlation filter that contains metric information for better discrimination. Furthermore, we design a Siamese network-based architecture to embed the metric correlation filter module mentioned above in order to benefit from the powerful representation ability of deep learning. Extensive experiments on challenging OTB100 and VOT2017 datasets demonstrate the competitive performance of the proposed algorithm performs favorably compared with state-of-the-art approaches. (C) 2019 Elsevier Ltd. All rights reserved.
机译:尽管计算机视觉领域取得了巨大成功,但视觉跟踪仍然是一个具有挑战性的任务。主要障碍物是目标物体通常遭受干扰,例如闭塞。由于大多数基于暹罗网络的跟踪器主要是用于训练的目标对象的样本图像斑块,跟踪算法缺乏有关周围环境的充分信息。此外,许多基于暹罗的跟踪算法仅在不考虑目标和背景之间的关系的情况下仅使用目标对象样本来构建回归,这可能会降低跟踪器的性能。在本文中,我们提出了标准相关暹罗网络和多类负采样跟踪方法。我们首次探讨了一种采样方法,包括三种不同类型的阴性样本:虚拟阴性样本用于预学习潜在的闭塞情况,边界负样本应对潜在的跟踪漂移,以及对潜在的追踪漂移,以及上下文负样本来应对潜在不正确的情况定位。利用三种阴性样本,我们还提出了一种公制相关方法来训练包含度量信息的相关滤波器,以便更好地辨别。此外,我们设计了一种基于网络的基于网络的架构来嵌入上面提到的度量相关滤波器模块,以便受益于深度学习的强大表示能力。关于挑战OTB100和VOT2017数据集的广泛实验证明了与最先进的方法相比,所提出的算法的竞争性能。 (c)2019年elestvier有限公司保留所有权利。

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