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MULTI-SCALE VEHICLE LOGO RECOGNITION BY DIRECTIONAL DENSE SIFT FLOW PARSING

机译:通过定向致密筛选流程解析多尺度车辆标志识别

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This paper considers robust vehicle logo recognition (without aiming at accurate location) for intelligent transportation systems. We propose a recognition-before-location framework for multi-scale vehicle logos which exploits a directional SIFT flow parsing method. We extract dense SIFT descriptors of different standard vehicle logos. An improved matching method is proposed to obtain a directional SIFT flow from standard logo models for vehicle images. Our vehicle logo recognition algorithm is based on dense SIFT matching energy and SIFT flow consistency. We verify the accuracy of vehicle logo recognition and the robustness for multi-scale 1-ogo images on various real data.
机译:本文认为强大的车辆标志识别(不瞄准精确的位置),适用于智能运输系统。我们提出了一种识别前的用于多尺度车辆标识的位置框架,用于利用定向筛选流程解析方法。我们提取不同标准车辆标志的密集SIFT描述符。提出了一种改进的匹配方法,以获得来自车辆图像的标准徽标模型的方向筛选流。我们的车辆标识识别算法基于致密的筛选能量和筛选流量稠度。我们验证了车辆标识识别的准确性以及在各种实际数据上的多尺度1-OGO图像的稳健性。

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