In recent years, several progressive works promote the development of aerial tracking. One of the representative works is our previous work Fast-tracker which is applicable to various challenging tracking scenarios. However, it suffers from two main drawbacks: 1) the over simplification in target detection by using artificial markers and 2) the contradiction between simultaneous target and environment perception with limited onboard vision. In this paper, we upgrade the target detection in Fast-tracker to detect and localize a human target based on deep learning and non-linear regression to solve the former problem. For the latter one, we equip the quadrotor system with 360 degree active vision on a customized gimbal camera. Furthermore, we improve the tracking trajectory planning in Fast-tracker by incorporating an occlusion-aware mechanism that generates observable tracking trajectories. Comprehensive real-world tests confirm the proposed system's robustness and real-time capability. Benchmark comparisons with Fast-tracker validate that the proposed system presents better tracking performance even when performing more difficult tracking tasks.
翻译:近年来,若干渐进式工作促进了空中跟踪的发展,其中一项具有代表性的工作是我们先前的工作快跟踪器,它适用于各种具有挑战性的跟踪设想,然而,它有两个主要缺点:(1) 使用人工标记对目标探测进行过度简化,(2) 同时目标感和环境感知与机载视觉有限之间的矛盾。在本文件中,我们将快速追踪器中的目标探测器升级,以探测和定位基于深层学习和非线性回归的人类目标,从而解决前一个问题。对于后一项工作,我们用一个定制的Gimbal相机为二次钻探系统配备360度主动视力。此外,我们通过纳入一个生成可观测跟踪跟踪轨迹的隐蔽性跟踪机制,改进快速跟踪仪的跟踪轨迹规划。综合现实世界测试证实了拟议系统的稳健性和实时能力。与快速追踪器进行基准比较证明,拟议的系统即使在执行更困难的跟踪任务时,也能更好地跟踪业绩。