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Discriminative and Robust Online Learning for Siamese Visual Tracking

机译:暹罗视觉跟踪的歧视和强大的在线学习

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The problem of visual object tracking has traditionally been handled by variant tracking paradigms, either learning a model of the object's appearance exclusively online or matching the object with the target in an offline-trained embedding space. Despite the recent success, each method agonizes over its intrinsic constraint. The online-only approaches suffer from a lack of generalization of the model they learn thus are inferior in target regression, while the offline-only approaches (e.g., convolutional siamese trackers) lack the target-specific context information thus are not discriminative enough to handle distractors, and robust enough to deformation. Therefore, we propose an online module with an attention mechanism for offline siamese networks to extract target-specific features under L2 error. We further propose a filter update strategy adaptive to treacherous background noises for discriminative learning, and a template update strategy to handle large target deformations for robust learning. Effectiveness can be validated in the consistent improvement over three siamese baselines: SiamFC, SiamRPN++, and SiamMask. Beyond that, our model based on SiamRPN++ obtains the best results over six popular tracking benchmarks and can operate beyond real-time.
机译:传统上,Visual Object跟踪的问题通过变体跟踪范式来处理,无论是专门在线学习对象的外观模型,还是将对象与目标匹配在离线训练的嵌入空间中。尽管最近的成功,但每种方法都会在其内在约束上痛苦。在线唯一的方法遭受他们学习的模型的概念缺乏,因此在目标回归中劣等,而唯一的离线方法(例如,卷积暹罗跟踪器)缺少目标特定的上下文信息,因此不是足够的差异来处理分散的人,足以变形。因此,我们提出了一个在线模块,具有脱机暹罗网络的注意机制,以提取L2错误下的目标特征。我们进一步提出了一种过滤器更新策略,适应危险的背景噪声,以进行歧视性学习,以及用于处理鲁棒学习的大目标变形的模板更新策略。可以在三暹罗基线的一致性改进中验证有效性:Siamfc,Siamrpn ++和Siammask。除此之外,我们基于Siamrpn ++的模型获得了六个流行的跟踪基准测试的最佳结果,可以超越实时运行。

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