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 to adapt to regression branch due to its complex design and intrinsic requirement for high-quality online samples. To tackle this issue, we present the fully convolutional online tracking framework, coined as FCOT, and focus on enabling online learning for both classification and regression branches by using a target filter based tracking paradigm. Our key contribution is to introduce an online regression model generator (RMG) for initializing weights of the target filter with online samples and then optimizing this target filter weights based on the groundtruth samples at the first frame. Based on the online RGM, we devise a simple anchor-free tracker (FCOT), composed of a feature backbone, an up-sampling decoder, a multi-scale classification branch, and a multi-scale regression branch. Thanks to the unique design of RMG, our FCOT can not only be more effective in handling target variation along temporal dimension thus generating more precise results, but also overcome the issue of error accumulation during the tracking procedure. In addition, due to its simplicity in design, our FCOT could be trained and deployed in a fully convolutional manner with a real-time running speed. The proposed FCOT achieves the state-of-the-art performance on seven benchmarks, including VOT2018, LaSOT, TrackingNet, GOT-10k, OTB100, UAV123, and NFS. Code and models of our FCOT have been released at: \url{https://github.com/MCG-NJU/FCOT}.
翻译:在线学习对改进跟踪绩效非常有效。 然而,它可以简单地应用到分类处,但由于其复杂设计和高质量在线样本的内在要求,仍然难以适应回归处。 解决这个问题,我们展示了完全革命性的在线跟踪框架,称为FCOT, 重点是通过使用基于目标过滤的跟踪模式,为分类和回归分支提供在线学习。 我们的主要贡献是引入一个在线回归模型生成器(RMG ), 用于初始化目标过滤器的重量, 并使用在线样本, 然后根据第一个框架的地面真相样本优化这一目标过滤器重量。 基于在线RGM, 我们设计了一个简单的无锚跟踪器(FCOT ), 由一个功能主干网、 一个升级的解码、 一个多尺度的分类分支以及一个多尺度的回归分支组成。 由于RMGEG的独特设计, 我们的FOT不仅能够更有效地处理时间层面的目标变异,从而产生更精确的结果, 还可以克服跟踪过程中的错误累积问题。 此外,由于在实时跟踪程序上, IMOT/FOT 的运行中,, 正在完全简化地运行, 。