论文标题
实时无人机对象跟踪的培训式蒸馏
Training-Set Distillation for Real-Time UAV Object Tracking
论文作者
论文摘要
相关过滤器(CF)最近在无人驾驶汽车(UAV)的视觉对象跟踪中表现出了有希望的性能。这种在线学习方法在很大程度上取决于训练集的质量,但遮挡或视觉上的复杂空中情景可以降低其可靠性。在这项工作中,提出了一种新型的基于时间插槽的蒸馏方法,以有效地有效地优化训练集的质量。建立合作能量最小化函数以适应历史样本。为了加速评分过程,采用具有高自信的跟踪结果的框架作为将跟踪过程分为多个时间段的关键框架。建立新插槽后,以前样品的加权融合会生成一个键样本,以减少要评分的样本数量。此外,当当前时间插槽超过可以评分的最大帧数时,分数最低的样本将被丢弃。因此,训练式可以有效且可靠地蒸馏出来。对两个著名无人机基准测试的全面测试证明了我们方法在单个CPU上实时速度的有效性。
Correlation filter (CF) has recently exhibited promising performance in visual object tracking for unmanned aerial vehicle (UAV). Such online learning method heavily depends on the quality of the training-set, yet complicated aerial scenarios like occlusion or out of view can reduce its reliability. In this work, a novel time slot-based distillation approach is proposed to efficiently and effectively optimize the training-set's quality on the fly. A cooperative energy minimization function is established to score the historical samples adaptively. To accelerate the scoring process, frames with high confident tracking results are employed as the keyframes to divide the tracking process into multiple time slots. After the establishment of a new slot, the weighted fusion of the previous samples generates one key-sample, in order to reduce the number of samples to be scored. Besides, when the current time slot exceeds the maximum frame number, which can be scored, the sample with the lowest score will be discarded. Consequently, the training-set can be efficiently and reliably distilled. Comprehensive tests on two well-known UAV benchmarks prove the effectiveness of our method with real-time speed on a single CPU.