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Detection of license plate characters in natural scene with MSER and SIFT unigram classifier

机译:使用MSER和SIFT字母组合分类器检测自然场景中的车牌字符

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We present a license plate detector using a fusion of Maximally Stable Extremal Regions (MSER) and SIFT-based unigram classifier trained with Core Vector Machine (CVM). First, MSER is used to obtain a set of regions. Highly unlikely regions are removed with a simplistic heuristic-based filter. Finally, remaining regions with sufficient positively classified SIFT keypoint are retained as likely license plate regions. To train the unigram classifier, a set of SIFT keypoints are obtained from a small set of ground truth images where the license plates are labeled. The training of the SIFT-based unigram classifier is found to be optimal when a CVM is used. On our testing data set, we got a recall rate of 0.98 and a precision rate of 0.964641. On the Caltech Cars (Rear) data set, a recall rate of 0.904762 and precision rate of 0.837349 is obtained.
机译:我们提出了一种车牌检测器,它使用了最大稳定极值区域(MSER)和受核心向量机(CVM)训练的基于SIFT的字母组合分类器的融合。首先,使用MSER获得一组区域。使用基于启发式的简单过滤器可以去除极不可能的区域。最后,将具有足够积极分类的SIFT关键点的其余区域保留为可能的车牌区域。为了训练unigram分类器,可以从一小组标记了牌照的地面真实图像中获得一组SIFT关键点。当使用CVM时,发现基于SIFT的字母组合分类器的训练是最佳的。在我们的测试数据集上,我们的召回率是0.98,准确率是0.964641。在Caltech Cars(Rear)数据集上,得出的召回率为0.904762,准确率为0.837349。

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