Low-light environments have posed a formidable challenge for robust unmanned aerial vehicle (UAV) tracking even with state-of-the-art (SOTA) trackers since the potential image features are hard to extract under adverse light conditions. Besides, due to the low visibility, accurate online selection of the object also becomes extremely difficult for human monitors to initialize UAV tracking in ground control stations. To solve these problems, this work proposes a novel enhancer, i.e., HighlightNet, to light up potential objects for both human operators and UAV trackers. By employing Transformer, HighlightNet can adjust enhancement parameters according to global features and is thus adaptive for the illumination variation. Pixel-level range mask is introduced to make HighlightNet more focused on the enhancement of the tracking object and regions without light sources. Furthermore, a soft truncation mechanism is built to prevent background noise from being mistaken for crucial features. Evaluations on image enhancement benchmarks demonstrate HighlightNet has advantages in facilitating human perception. Experiments on the public UAVDark135 benchmark show that HightlightNet is more suitable for UAV tracking tasks than other SOTA low-light enhancers. In addition, real-world tests on a typical UAV platform verify HightlightNet's practicability and efficiency in nighttime aerial tracking-related applications. The code and demo videos are available at https://github.com/vision4robotics/HighlightNet.
翻译:低光环境对强健的无人驾驶飞行器(UAV)跟踪构成巨大挑战,即使使用最先进的跟踪器(SOTA),也给强力无人驾驶飞行器(UAV)跟踪系统带来巨大挑战,因为潜在的图像特征在不利的光线条件下很难提取,此外,由于可见度低,对物体的准确在线选择也给人类监测器在地面控制站启动UAV跟踪工作带来极大困难。为解决这些问题,这项工作提议建立一个新型增强器,即高光网,为人类操作员和UAV跟踪器照明潜在对象。通过使用变换器,高光网可以根据全球特征调整增强参数,从而适应照明变异。引入了像素级范围掩码,使高光网更加侧重于加强没有光源的跟踪对象和区域。此外,软调调机制的建立以防止背景噪音误判关键特征。图像增强基准显示高光网在帮助人类认识方面有优势。在公共UAVDARK135基准上进行的实验显示,高光网更适合根据全球特点调整参数,从而适应照明网络的变异变异变。引入高光网络,在SAVINet/SVDVDO-S-stettialst-st-t