Drones are currently being explored for safety-critical applications where human agents are expected to evolve in their vicinity. In such applications, robust people avoidance must be provided by fusing a number of sensing modalities in order to avoid collisions. Currently however, people detection systems used on drones are solely based on standard cameras besides an emerging number of works discussing the fusion of imaging and event-based cameras. On the other hand, radar-based systems provide up-most robustness towards environmental conditions but do not provide complete information on their own and have mainly been investigated in automotive contexts, not for drones. In order to enable the fusion of radars with both event-based and standard cameras, we present KUL-UAVSAFE, a first-of-its-kind dataset for the study of safety-critical people detection by drones. In addition, we propose a baseline CNN architecture with cross-fusion highways and introduce a curriculum learning strategy for multi-modal data termed SAUL, which greatly enhances the robustness of the system towards hard RGB failures and provides a significant gain of 15% in peak F1 score compared to the use of BlackIn, previously proposed for cross-fusion networks. We demonstrate the real-time performance and feasibility of the approach by implementing the system in an edge-computing unit. We release our dataset and additional material in the project home page.
翻译:目前正在探索无人驾驶飞机的安全关键应用,其中预计人类物剂会在其周围发展,在这种应用中,必须采用多种感测方式提供强有力的人避险手段,以避免碰撞。但目前,无人驾驶飞机上使用的人的探测系统仅以标准摄像头为基础,而除了讨论图像和事件摄影机融合的新兴工作外,还仅以标准摄像头为基础。另一方面,雷达系统对环境条件提供最强的稳健性,但不能自行提供完整的信息,而主要是在汽车环境下进行调查,而不是无人驾驶飞机。为了能够将雷达与基于事件和标准摄像头相结合,我们提供了KUL-UAVSAFE,这是用于研究无人驾驶飞机安全关键人物探测的首创型数据组。此外,我们提议建立一个有交集高速公路的CNN基线结构,并引入称为SAUL的多模式数据学习战略,这大大加强了该系统对硬性RGB故障的稳健性,而且主要是为了将F1评分率提高到15%的峰值,而我们先前建议采用Block-Pe-Ve-Profrime Ste-st Profal-ststal-stal-stal-weal-pal-weal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-pal-p-pal-pal-pal-fal-p-pal-p-p-pal-p-p-p-p-p-p-p-p-p-p-p-p-p-p-p-p-p-p-p-p-p-p-p-p-pal-pal-p-p-p-p-p-p-p-p-p-p-p-p-p-p-p-p-p-p-p-p-pal-fal-fal-fal-fal-p-fal-pal-fal-pal-