Automated Military Vehicle Detection from Low-Altitude Aerial Images

F. Kamran, M. Shahzad, F. Shafait
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引用次数: 12

Abstract

Detection and identification of military vehicles from aerial images is of great practical interest particularly for defense sector as it aids in predicting enemys move and hence, build early precautionary measures. Although due to advancement in the domain of self-driving cars, a vast literature of published algorithms exists that use the terrestrial data to solve the problem of vehicle detection in natural scenes. Directly translating these algorithms towards detection of both military and non-military vehicles in aerial images is not straight forward owing to high variability in scale, illumination and orientation together with articulations both in shape and structure. Moreover, unlike availability of terrestrial benchmark datasets such as Baidu Research Open-Access Dataset etc., there does not exist well-annotated datasets encompassing both military and non-military vehicles in aerial images which as a consequence limit the applicability of the state-of-the-art deep learning based object detection algorithms that have shown great success in the recent years. To this end, we have prepared a dataset of low-altitude aerial images that comprises of both real data (taken from military shows videos) and toy data (downloaded from YouTube videos). The dataset has been categorized into three main types, i.e., military vehicle, non-military vehicle and other non-vehicular objects. In total, there are 15,086 (11,733 toy and 3,353 real) vehicle images exhibiting a variety of different shapes, scales and orientations. To analyze the adequacy of the prepared dataset, we employed the state-of-the-art object detection algorithms to distinguish military and non-military vehicles. The experimental results show that the training of deep architectures using the customized/prepared dataset allows to recognize seven types of military and four types of non-military vehicles.
从低空航拍图像自动检测军用车辆
从航空图像中探测和识别军用车辆具有很大的实际意义,特别是对国防部门来说,因为它有助于预测敌人的行动,从而建立早期预防措施。尽管由于自动驾驶汽车领域的进步,存在大量已发表的算法文献,使用地面数据来解决自然场景中的车辆检测问题。将这些算法直接转化为航空图像中军事和非军事车辆的检测并不是直截了当的,因为尺度、照明和方向以及形状和结构上的关节都具有高度可变性。此外,与地面基准数据集(如百度研究开放获取数据集等)的可用性不同,航空图像中不存在包含军用和非军用车辆的良好注释数据集,因此限制了近年来取得巨大成功的基于最先进深度学习的目标检测算法的适用性。为此,我们准备了一个低空航拍图像数据集,其中包括真实数据(取自军事表演视频)和玩具数据(从YouTube视频下载)。数据集主要分为三类,即军用车辆、非军用车辆和其他非车辆物体。总共有15,086张(11,733张玩具和3,353张真实)车辆图像,展示了各种不同的形状、比例和方向。为了分析准备数据集的充分性,我们采用了最先进的目标检测算法来区分军用和非军用车辆。实验结果表明,使用定制/准备数据集进行深度架构训练,可以识别7种军用车辆和4种非军用车辆。
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