Recent years have witnessed the fast evolution and promising performance of the convolutional neural network (CNN)-based trackers, which aim at imitating biological visual systems. However, current CNN-based trackers can hardly generalize well to low-light scenes that are commonly lacked in the existing training set. In indistinguishable night scenarios frequently encountered in unmanned aerial vehicle (UAV) tracking-based applications, the robustness of the state-of-the-art (SOTA) trackers drops significantly. To facilitate aerial tracking in the dark through a general fashion, this work proposes a low-light image enhancer namely DarkLighter, which dedicates to alleviate the impact of poor illumination and noise iteratively. A lightweight map estimation network, i.e., ME-Net, is trained to efficiently estimate illumination maps and noise maps jointly. Experiments are conducted with several SOTA trackers on numerous UAV dark tracking scenes. Exhaustive evaluations demonstrate the reliability and universality of DarkLighter, with high efficiency. Moreover, DarkLighter has further been implemented on a typical UAV system. Real-world tests at night scenes have verified its practicability and dependability.
翻译:近些年来,以神经神经网络(CNN)为基础、旨在模仿生物视觉系统的快速演变和前景良好的跟踪器近年目睹了以生物视觉系统为目的的革命性神经网络(CNN)跟踪器的快速演进和前景良好;然而,目前以CNN为基础的跟踪器几乎无法向现有成套培训中通常缺乏的低光场进行全面概括;在无人驾驶飞行器(UAV)跟踪应用中经常遇到的难以区分的夜景情景中,最先进的跟踪器(SOTA)跟踪器的强健性显著下降;为便利以一般方式在黑暗中进行空中跟踪,这项工作提出了一种低光图像增强器,即DarkLighter,它致力于减轻低光度照明和噪音的反复影响;一个轻度的地图估计网络,即ME-Net,经过培训,可以有效地联合估计照明图和噪音图;与若干SOTA跟踪器的跟踪器对许多UAV黑暗跟踪场景进行了实验;为显示暗光的可靠性和普遍性,而且效率很高。此外,DarkLighter还进一步在典型的UAVA系统上进行了精确性测试。