Compared with visible object tracking, thermal infrared (TIR) object tracking can track an arbitrary target in total darkness since it cannot be influenced by illumination variations. However, there are many unwanted attributes that constrain the potentials of TIR tracking, such as the absence of visual color patterns and low resolutions. Recently, structured output support vector machine (SOSVM) and discriminative correlation filter (DCF) have been successfully applied to visible object tracking, respectively. Motivated by these, in this paper, we propose a large margin structured convolution operator (LMSCO) to achieve efficient TIR object tracking. To improve the tracking performance, we employ the spatial regularization and implicit interpolation to obtain continuous deep feature maps, including deep appearance features and deep motion features, of the TIR targets. Finally, a collaborative optimization strategy is exploited to significantly update the operators. Our approach not only inherits the advantage of the strong discriminative capability of SOSVM but also achieves accurate and robust tracking with higher-dimensional features and more dense samples. To the best of our knowledge, we are the first to incorporate the advantages of DCF and SOSVM for TIR object tracking. Comprehensive evaluations on two thermal infrared tracking benchmarks, i.e. VOT-TIR2015 and VOT-TIR2016, clearly demonstrate that our LMSCO tracker achieves impressive results and outperforms most state-of-the-art trackers in terms of accuracy and robustness with sufficient frame rate.
翻译:与可见天体跟踪相比,热红外线(TIR)天体跟踪可以在全黑暗中追踪任意目标,因为它无法受到光化变化的影响;然而,有许多不想要的属性制约了国际公路货运跟踪的潜力,例如缺乏视觉颜色模式和低分辨率;最近,结构化产出支持矢量机(SOSVM)和歧视性相关过滤器(DCF)分别成功地应用于可见天体跟踪;由于这些动机,我们提议建立一个大型的边际结构化传输操作器(LMSCO),以实现高效的国际公路货运跟踪目标跟踪;为了改进跟踪性能,我们利用空间正规化和隐含的内插插图,以获得国际公路货运跟踪目标的持续深度地貌分布图,包括深度外观特征和深度运动特征;最后,利用协作优化战略对操作者进行重大更新;我们的方法不仅继承了SOSVVVMM的强大歧视能力的优势,而且还以更高尺寸和更稠密的样品进行准确的跟踪;我们最了解的是,我们首先将DCF和SOSVVM的优势纳入国际公路目标跟踪框架;在两条红外的轨道上,明确显示我们红外的轨道上的跟踪结果。