论文标题
无人驾驶飞机航空跟踪的相关过滤器:审查和实验评估
Correlation Filters for Unmanned Aerial Vehicle-Based Aerial Tracking: A Review and Experimental Evaluation
论文作者
论文摘要
航空跟踪表现出无处不在的奉献精神和出色的表现,是遥感领域中最活跃的应用之一。尤其是,配备了视觉跟踪方法的无人机(UAV)的遥感系统已被广泛用于航空,导航,农业,农业,运输和公共安全等。但是,由于现实世界中的繁重情况,例如严峻的外部挑战,无人机机械结构的振动(尤其是在强风条件下),复杂环境中的机动飞行以及有限的计算资源在船上,精度,鲁棒性和高效率对于板载跟踪方法都是至关重要的。最近,基于歧视的相关滤波器(DCF)的跟踪器在单个CPU上的高计算效率和具有吸引力的鲁棒性而脱颖而出,并且在无人机的视觉跟踪社区中蓬勃发展。在这项工作中,首先将基于DCF的跟踪器的基本框架进行了概括,基于该框架,根据其解决各种问题的创新,将有23个基于DCF的最先进的基于DCF的跟踪器有序汇总。此外,在各种盛行的无人机跟踪基准(即UAV123,UAV123@10FPS,UAV20L,UAVD20L,UAVDT,DTB70和Visdrone2019-Sot)上,详尽和定量实验已扩展,即UAV123,UAV123@10fps@uav123,总共包含371,903帧。实验显示了性能,验证可行性,并证明了基于DCF的无人机跟踪的当前挑战。
Aerial tracking, which has exhibited its omnipresent dedication and splendid performance, is one of the most active applications in the remote sensing field. Especially, unmanned aerial vehicle (UAV)-based remote sensing system, equipped with a visual tracking approach, has been widely used in aviation, navigation, agriculture,transportation, and public security, etc. As is mentioned above, the UAV-based aerial tracking platform has been gradually developed from research to practical application stage, reaching one of the main aerial remote sensing technologies in the future. However, due to the real-world onerous situations, e.g., harsh external challenges, the vibration of the UAV mechanical structure (especially under strong wind conditions), the maneuvering flight in complex environment, and the limited computation resources onboard, accuracy, robustness, and high efficiency are all crucial for the onboard tracking methods. Recently, the discriminative correlation filter (DCF)-based trackers have stood out for their high computational efficiency and appealing robustness on a single CPU, and have flourished in the UAV visual tracking community. In this work, the basic framework of the DCF-based trackers is firstly generalized, based on which, 23 state-of-the-art DCF-based trackers are orderly summarized according to their innovations for solving various issues. Besides, exhaustive and quantitative experiments have been extended on various prevailing UAV tracking benchmarks, i.e., UAV123, UAV123@10fps, UAV20L, UAVDT, DTB70, and VisDrone2019-SOT, which contain 371,903 frames in total. The experiments show the performance, verify the feasibility, and demonstrate the current challenges of DCF-based trackers onboard UAV tracking.