Online learning has turned out to be effective for improving tracking performance. However, it could be simply applied for classification branch, but still remains challenging for adapting to regression branch due to the complex design. To tackle this issue, we present the first fully convolutional online tracking framework (FCOT), with a focus on enabling online learning for both classification and regression branches. Our key contribution is to introduce an online regression model generator (RMG) based on the carefully designed anchor-free box regression branch, which enables our FCOT to be more effective in handling target deformation during tracking procedure. In addition, to deal with the confusion of similar objects, we devise a simple yet effective multi-scale classification branch to improve both accuracy and robustness of FCOT. Due to its simplicity in design, our FCOT could be trained and deployed in a fully convolutional manner with a running speed of 45FPS. The proposed FCOT sets a new state-of-the-art results on six benchmarks including VOT2018, LaSOT, TrackingNet, GOT-10k, UAV123, and NFS. Particularly, among real-time trackers, our FCOT achieves EAO of 0.456 on VOT2018, NP of 0.678 on LaSOT, NP of 0.828 on TrackingNet, and AO of 0.640 on GOT-10k. The code and models will be made available at https://github.com/MCG-NJU/FCOT.
翻译:在线学习对改进跟踪绩效是有效的。然而,它可以简单地应用到分类处,但由于设计复杂,仍然难以适应回归处。为了解决这一问题,我们提出了第一个全演在线跟踪框架(FCOT),重点是为分类和回归处提供在线学习。我们的主要贡献是引入一个基于精心设计的无锚定位箱回归分支的在线回归模型生成器(RMG ),这将使我们的FCOT能够更有效地处理跟踪程序中的目标变形。此外,为了应对类似物体的混乱,我们设计了一个简单而有效的多规模分类处,以提高FCOT的准确性和稳健性。由于设计简洁,我们的FCOT可以以全演进方式培训和部署,运行速度为45 FPS。拟议的FOT在VOT2018、LaSOT、GOT18和NFS 0.40的实时跟踪器中,我们FCOT在0.18和OTOTO的轨道上实现了0.48和0.80OTANGO。