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Vehicle detection and classification using robust shadow feature

机译:使用强大的阴影功能进行车辆检测和分类

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Abstract: We propose an efficient vehicle detection and classification algorithm using shadow robust feature for an electronic toll collection. The local correlation coefficient between wavelet transformed input and reference images is used as such a feature, which takes advantage of textural similarity. The usefulness of the proposed feature is analyzed qualitatively by comparing the feature with the local variance of a difference image, and is verified by measuring the improvements in the separability of vehicle from shadowy or shadowless road for a real test image. Experimental results from field tests show that the proposed vehicle detection and classification algorithm performs well even under abrupt intensity change due to the characteristics of sensor and occurrence of shadow. !8
机译:摘要:我们提出了一种有效的车辆检测和分类算法,该算法使用阴影鲁棒性功能进行电子收费。小波变换的输入图像和参考图像之间的局部相关系数被用作这种特征,该特征利用了纹理相似性。通过将特征与差异图像的局部方差进行比较,对所提出的特征的有用性进行了定性分析,并针对实际测试图像通过测量车辆与有阴影或无阴影道路之间的可分离性方面的改进进行了验证。现场测试的实验结果表明,所提出的车辆检测和分类算法即使在由于传感器的特性和阴影的出现而导致的强度突然变化的情况下也能表现良好。 !8

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