Vehicle type recognition based on adaptive scaling window and masks

Wenying Mo, Ying Gao
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Abstract

In recent years, more and more approaches were proposed for vehicle logo recognition. However, most of the approaches achieve high performance only when the images have high resolution and the number of vehicle type to be classified is few. In this paper, a novel algorithm is proposed to treat with various resolutions of vehicle images and recognize a large number of vehicle logos. This algorithm is based on adaptive scaling sliding window and template matching with screening masks that is applied to detect the most accurate size and feature position of the target logo. In order to solve the problem that complicated texture noise affects the accuracy of template matching seriously, different screening masks are utilized for different vehicles. The algorithm avoids the difficulties of features localization and can recognize a great number of vehicle logos. This algorithm is applied on a dataset comprised of 10000 vehicle images with 102 types of vehicle logos taken in different environment by different traffic cameras. Experiment results show an overall recognition ratio of 91.62%.
基于自适应缩放窗口和掩模的车辆类型识别
近年来,人们提出了越来越多的车辆标识识别方法。然而,大多数方法只有在图像分辨率高、待分类车型数量少的情况下才能达到高性能。本文提出了一种处理不同分辨率车辆图像并识别大量车辆标志的新算法。该算法基于自适应缩放滑动窗口和模板匹配与筛选蒙版,用于检测最准确的目标标志的尺寸和特征位置。为了解决复杂的纹理噪声严重影响模板匹配精度的问题,针对不同的车辆采用了不同的屏蔽掩码。该算法避免了特征定位的困难,能够识别大量的车辆标志。该算法应用于不同交通摄像机在不同环境下拍摄的包含102种车辆标志的10000幅车辆图像的数据集。实验结果表明,整体识别率为91.62%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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