IEEE Trans Image Process. 2017 Nov;26(11):5270-5283. doi: 10.1109/TIP.2017.2733199. Epub 2017 Jul 28.
Correlation filters have been successfully used in visual tracking due to their modeling power and computational efficiency. However, the state-of-the-art correlation filter-based (CFB) tracking algorithms tend to quickly discard the previous poses of the target, since they consider only a single filter in their models. On the contrary, our approach is to register multiple CFB trackers for previous poses and exploit the registered knowledge when an appearance change occurs. To this end, we propose a novel tracking algorithm [of complexity O(D) ] based on a large ensemble of CFB trackers. The ensemble [of size O(2) ] is organized over a binary tree (depth D ), and learns the target appearance subspaces such that each constituent tracker becomes an expert of a certain appearance. During tracking, the proposed algorithm combines only the appearance-aware relevant experts to produce boosted tracking decisions. Additionally, we propose a versatile spatial windowing technique to enhance the individual expert trackers. For this purpose, spatial windows are learned for target objects as well as the correlation filters and then the windowed regions are processed for more robust correlations. In our extensive experiments on benchmark datasets, we achieve a substantial performance increase by using the proposed tracking algorithm together with the spatial windowing.
相关滤波器由于其建模能力和计算效率,已成功应用于视觉跟踪。然而,最先进的基于相关滤波器的 (CFB) 跟踪算法往往会很快丢弃目标的先前姿态,因为它们在模型中只考虑单个滤波器。相反,我们的方法是为先前的姿态注册多个 CFB 跟踪器,并在出现外观变化时利用已注册的知识。为此,我们提出了一种新的跟踪算法[复杂度为 O(D)],它基于大量的 CFB 跟踪器。该集合[大小为 O(2)]组织在二叉树 (深度 D)上,并学习目标外观子空间,使得每个组成跟踪器成为特定外观的专家。在跟踪过程中,所提出的算法仅结合外观感知的相关专家来生成增强的跟踪决策。此外,我们提出了一种通用的空间窗口技术来增强单个专家跟踪器。为此,为目标对象以及相关滤波器学习空间窗口,然后处理窗口区域以进行更稳健的相关处理。在基准数据集上的广泛实验中,我们通过使用所提出的跟踪算法和空间窗口技术实现了显著的性能提升。