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Multi-Scale Vehicle Detection for Foreground-Background Class Imbalance with Improved YOLOv2

机译:改进的YOLOv2用于前景-背景类别失衡的多尺度车辆检测

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摘要

Vehicle detection is a challenging task in computer vision. In recent years, numerous vehicle detection methods have been proposed. Since the vehicles may have varying sizes in a scene, while the vehicles and the background in a scene may be with imbalanced sizes, the performance of vehicle detection is influenced. To obtain better performance on vehicle detection, a multi-scale vehicle detection method was proposed in this paper by improving YOLOv2. The main contributions of this paper include: (1) a new anchor box generation method Rk-means++ was proposed to enhance the adaptation of varying sizes of vehicles and achieve multi-scale detection; (2) Focal Loss was introduced into YOLOv2 for vehicle detection to reduce the negative influence on training resulting from imbalance between vehicles and background. The experimental results upon the Beijing Institute of Technology (BIT)-Vehicle public dataset demonstrated that the proposed method can obtain better performance on vehicle localization and recognition than that of other existing methods.
机译:车辆检测是计算机视觉中的一项艰巨任务。近年来,已经提出了许多车辆检测方法。由于车辆在场景中可能具有变化的尺寸,而场景中的车辆和背景可能具有不平衡的尺寸,所以车辆检测的性能受到影响。为了获得更好的车辆检测性能,本文通过改进YOLOv2提出了一种多尺度车辆检测方法。本文的主要贡献包括:(1)提出了一种新的锚框生成方法Rk-means ++,以增强对各种尺寸车辆的适应性,并实现多尺度检测。 (2)将焦点损失引入YOLOv2中以进行车辆检测,以减少由于车辆和背景之间的不平衡而对训练产生的负面影响。在北京理工大学(BIT)车辆公共数据集上的实验结果表明,该方法在车辆定位和识别方面比其他现有方法具有更好的性能。

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