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Method of weak vehicle detection based on the multilevel knowledge base

机译:基于多层次知识库的车辆弱电检测方法

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摘要

A vehicle detection algorithm based on the multilevel knowledge base is proposed to overcome the problem of poor robustness as well as the difficulty of identifying weak vehicle targets. The multilevel task-driven method is adopted in the algorithm by building three different classes of knowledge bases to achieve the accuracy recognition of vehicle targets. First, a simple knowledge base is constructed via choosing Haar-like features to detect the vehicle region of interest in the traffic scene image; second, the optimal structure symmetry decision function is obtained by establishing the structure characteristics knowledge base, which is used to determine the region of the potential vehicle; finally, the property feature knowledge base is built to precisely identify vehicle targets via calculating maximum similarity. Then the relevant knowledge base will be continuously updated to achieve the method adaptive adjustment when satisfying the criterion. Experimental results illustrate that the recognition rate is more than 95% in different traffic scenarios, while the recognition rate for weak contrast vehicle targets is in excess of 71% and the false-alarm rate is simultaneously under 5%. (C) 2015 SPIE and IS&T
机译:提出了一种基于多级知识库的车辆检测算法,以解决鲁棒性差以及难以识别较弱车辆目标的问题。该算法采用多级任务驱动的方法,通过建立三种不同类别的知识库来实现对车辆目标的准确识别。首先,通过选择类似Haar的特征来构建一个简单的知识库,以检测交通场景图像中感兴趣的车辆区域;其次,通过建立结构特征知识库获得最优结构对称性决策函数,用于确定潜在车辆的区域。最后,通过计算最大相似度来建立属性特征知识库,以精确识别车辆目标。然后,在满足标准时,将不断更新相关知识库,以实现方法的自适应调整。实验结果表明,在不同的交通场景下,识别率均超过95%,而弱对比车辆目标的识别率则超过71%,同时误报率也低于5%。 (C)2015 SPIE和IS&T

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