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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >A Cascaded Deep Convolutional Network for Vehicle Logo Recognition From Frontal and Rear Images of Vehicles
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A Cascaded Deep Convolutional Network for Vehicle Logo Recognition From Frontal and Rear Images of Vehicles

机译:一种级联深度卷积网络,用于车辆正面和后部图像的车辆标志识别

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摘要

Vehicle logo recognition provides an important supplement to vehicle make and model analysis. Some of the existing vehicle logo recognition methods depend on the detection of license plates to roughly locate vehicle logo regions using prior knowledge. The vehicle logo recognition performance is greatly affected by the license plate detection techniques. This paper presents a cascaded deep convolutional network for directly recognizing vehicle logos without depending on the existence of license plates. This is a two-stage processing framework composed of a region proposal network and a convolutional capsule network. First, potential region proposals that might contain vehicle logos are generated by the region proposal network. Then, the convolutional capsule network classifies these region proposals into the background and different types of vehicle logos. We have evaluated the proposed framework on a large test set towards vehicle logo recognition. Quantitative evaluations show that a detection rate, a recognition rate, and an overall performance of 0.987, 0.994, and 0.981, respectively, are achieved. Comparative studies with the Faster R-CNN and other three existing methods also confirm that the proposed method performs effectively and robustly in recognizing vehicle logos of various conditions.
机译:车辆标志识别为车辆制作和模型分析提供了一个重要的补充。一些现有的车辆标识识别方法取决于许可板的检测,以使用先验知识来粗略地定位车辆标志区域。车辆标识识别性能受到牌照检测技术的大大影响。本文呈现了一个级联的深卷积网络,用于直接识别车辆标志,而无需根据牌照的存在。这是由区域提案网络和卷积胶囊网络组成的两级处理框架。首先,可能包含车辆标志的潜在区域提案由该区域提案网络生成。然后,卷积胶囊网络将这些区域提案分类为背景和不同类型的车辆标志。我们已经在朝向车辆标志识别方面进行了评估了拟议的框架。定量评估表明,达到检测率,识别率和0.987,0.994和0.981的整体性能。比较研究与较快的R-CNN和其他三种现有方法也证实了该方法在识别各种条件的车辆标识中有效且强大地执行。

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