Discriminative training has turned out to be effective for robust tracking. However, online learning could be simply applied for classification branch, while still remains challenging to adapt to regression branch due to its complex design. In this paper, 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 anchor-free box regression branch, which unifies the whole tracking pipeline into a simpler fully convolutional network. This unified framework is beneficial to greatly decrease the complexity of tracking system and allows for more efficient training and inference. In addition, thanks to its simplicity, we are able to design a regression model generator (RMG) to perform online optimization of regression branch, making the whole tracking pipeline more effective in handling target deformation during tracking procedure. The proposed FCOT sets a new state-of-the-art results on five benchmarks including GOT-10k, LaSOT, TrackingNet, UAV123 and NFS, and performs on par with the state-of-the-art trackers on OTB100, with a high running speed of 53 FPS. The code and models will be made available at https://github.com/MCG-NJU/FCOT.
翻译:然而,在线学习可以简单适用于分类处,但因其设计复杂,仍然难以适应回归处。本文介绍第一个全面进化在线跟踪框架(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无锚的箱式回归分支,将整个跟踪管道统一成一个更简单的完全进化网络。这一统一框架有助于大大降低跟踪系统的复杂性,并允许更有效的培训和推断。此外,由于系统简单,我们有能力设计一个回归模型生成器(RMG),以在线优化回归处,使整个跟踪管道在跟踪过程中更有效地处理目标变形。拟议的FCOT在五个基准上设定了新的最新结果,包括GOD-10k、LaSOT、跟踪网、UAV123和NFS,并与OTB100州艺术跟踪器同步运行。 将快速运行53 FPS/NMC/MFS/MC. 的代码和模型在 ALBS-G/MCFS/MCFS.