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A comprehensive study on object proposals methods for vehicle detection in aerial images

机译:航空图像中车辆检测目标建议方法的综合研究

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Detecting vehicles in aerial images is an important task in many applications such as traffic monitoring or screening of large areas. In general, vehicle detection in aerial images is performed by applying classifiers or a cascade of classifiers within a sliding window algorithm. However, detecting vehicles in a real-time system is limited by the huge number of windows to classify, especially in case of varying object scales, aspect ratios or object orientations. To reduce the high number of windows, we propose to apply so called object proposals methods. In recent years, several object proposals methods have been proposed for generating candidate windows in detection frameworks. However, aerial images differ considerably from datasets that are typically used for exploring such methods. To examine the applicability of such methods for aerial images, we evaluate 11 state-of-the-art object proposals methods on the publicly available DLR 3K Munich Vehicle Aerial Image Dataset. First, we manually modified the provided ground truth data to enable comparison to the generated object proposals. To compensate for the differing characteristics of the aerial images, we adapted seven methods by examining different parameter settings and extensions for each method separately. Finally, we demonstrate the potential of such methods for a detection framework for aerial images as significantly fewer candidate windows are generated in comparison to sliding window.
机译:在许多应用中(例如交通监控或大面积遮挡),在空中图像中检测车辆是一项重要任务。通常,通过在滑动窗口算法内应用分类器或分类器的级联来执行航空图像中的车辆检测。但是,在实时系统中检测车辆受到要分类的大量窗口的限制,尤其是在对象比例,纵横比或对象方向变化的情况下。为了减少大量窗口,我们建议应用所谓的对象建议方法。近年来,已经提出了几种用于在检测框架中生成候选窗口的对象提议方法。但是,航空影像与通常用于探索此类方法的数据集有很大不同。为了检查此类方法在航空影像中的适用性,我们在可公开获得的DLR 3K慕尼黑车辆航空影像数据集上评估了11种最新的对象建议方法。首先,我们手动修改了提供的基本事实数据,以便与生成的对象建议进行比较。为了补偿航拍图像的不同特征,我们通过分别检查每种方法的不同参数设置和扩展名来适应了七种方法。最后,我们证明了这种方法在航空图像检测框架中的潜力,因为与滑动窗口相比,生成的候选窗口明显更少。

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