This work presented a new drone-based face detection dataset Drone LAMS in order to solve issues of low performance of drone-based face detection in scenarios such as large angles which was a predominant working condition when a drone flies high. The proposed dataset captured images from 261 videos with over 43k annotations and 4.0k images with pitch or yaw angle in the range of -90{\deg} to 90{\deg}. Drone LAMS showed significant improvement over currently available drone-based face detection datasets in terms of detection performance, especially with large pitch and yaw angle. Detailed analysis of how key factors, such as duplication rate, annotation method, etc., impact dataset performance was also provided to facilitate further usage of a drone on face detection.
翻译:这项工作提出了一个新的无人机面对面探测数据集Drone LAMS,目的是解决无人机面对面探测的低性能问题,例如在无人机飞高时以大角度为主要工作状态,拟议的数据集从261个视频中采集的图像,有43k以上注解和4.0k图像,斜角为-90=deg}至90=deg};Drone LAMS在探测性能方面比现有的无人机面对面探测数据集有显著改进,特别是大方向和斜角。还详细分析了重叠率、注解方法等关键因素、影响数据集的性能如何促进面部探测时进一步使用无人机。