论文标题
进行歧视性跟踪的渐进多阶段学习
Progressive Multi-Stage Learning for Discriminative Tracking
论文作者
论文摘要
视觉跟踪通常被解决为一个歧视性学习问题,通常需要高质量的在线模型适应。评估从以前的预测中收集的培训样本并采用样本选择来训练模型是一个至关重要的问题。 为了解决上述问题,我们提出了一种联合歧视性学习方案,该方案具有渐进的多阶段优化策略,用于选择可靠的视觉跟踪。提出的方案提出了一种新颖的时间加权和检测引导的自定进度学习策略,可易于选择,该策略能够耐受相对较大的类内变化,同时保持类间的可分离性。这种自定进度的学习策略与歧视性跟踪过程共同优化,从而产生了强大的跟踪结果。基准数据集上的实验证明了提出的学习框架的有效性。
Visual tracking is typically solved as a discriminative learning problem that usually requires high-quality samples for online model adaptation. It is a critical and challenging problem to evaluate the training samples collected from previous predictions and employ sample selection by their quality to train the model. To tackle the above problem, we propose a joint discriminative learning scheme with the progressive multi-stage optimization policy of sample selection for robust visual tracking. The proposed scheme presents a novel time-weighted and detection-guided self-paced learning strategy for easy-to-hard sample selection, which is capable of tolerating relatively large intra-class variations while maintaining inter-class separability. Such a self-paced learning strategy is jointly optimized in conjunction with the discriminative tracking process, resulting in robust tracking results. Experiments on the benchmark datasets demonstrate the effectiveness of the proposed learning framework.