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Detection of vehicle parts based on Faster R-CNN and relative position information

机译:基于更快的R-CNN和相对位置信息检测车辆部件

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Detection and recognition of vehicles are two essential tasks in intelligent transportation system (ITS). Currently, a prevalent method is to detect vehicle body, logo or license plate at first, and then recognize them. So the detection task is the most basic, but also the most important work. Besides the logo and license plate, some other parts, such as vehicle face, lamp, windshield and rearview mirror, are also key parts which can reflect the characteristics of vehicle and be used to improve the accuracy of recognition task. In this paper, the detection of vehicle parts is studied, and the work is novel. We choose Faster R-CNN as the basic algorithm, and take the local area of an image where vehicle body locates as input, then can get multiple bounding boxes with their own scores. If the box with maximum score is chosen as final result directly, it is often not the best one, especially for small objects. This paper presents a method which corrects original score with relative position information between two parts. Then we choose the box with maximum comprehensive score as the final result. Compared with original output strategy, the proposed method performs better.
机译:检测和识别车辆是智能运输系统(其)中的两个基本任务。目前,普遍存在的方法首先检测车身,徽标或车牌,然后识别它们。所以检测任务是最基本的,也是最重要的工作。除了徽标和车牌之外,还有一些其他部件,如车脸,灯,挡风玻璃和后视镜,也是可以反映车辆特性的关键部件,并用于提高识别任务的准确性。在本文中,研究了车辆部件的检测,工作是新颖的。我们选择更快的R-CNN作为基本算法,并占据车身定位为输入的图像的局域,然后可以获得具有自己的分数的多个边界框。如果直接选择最大分数的盒子作为最终结果,则通常不是最好的,特别是对于小物体。本文介绍了一种方法,该方法纠正了两部分之间的相对位置信息的原始分数。然后我们选择最大综合评分作为最终结果的框。与原始输出策略相比,所提出的方法表现更好。

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