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Research on Pedestrian Detection System based on Tripartite Fusion of 'HOG+SVM+Median filter'

机译:基于三方融合的“Hog + SVM +中位滤波器”的行人检测系统研究

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Aiming at the problem of low accuracy of traditional pedestrian detection methods in a complex monitoring environment, based on the histogram of oriented gradient (HOG) and support vector machine (SVM) pedestrian detection algorithms, incorporating median filter (MF), a pedestrian detection model based on tripartite fusion (PDMTF) is proposed. The model first uses the median filter algorithm to denoise the image, effectively reducing the impact of noise on the HOG feature descriptor. Then, uses the extracted pedestrian features to train the SVM classifier. In addition, in order to optimize the SVM classifier, the model conducts a secondary training on the misidentified pedestrian area. The final experimental results show that the pedestrian false detection rate of the PDMTF model is only 7%, which has a good pedestrian recognition rate in complex environment.
机译:针对复杂的监测环境中传统的行人检测方法精度低的问题,基于定向梯度(猪)和支持向量机(SVM)行人检测算法,包括中值滤波器(MF),行人检测模型提出了基于三方融合(PDMTF)。该模型首先使用中值滤波器算法来欺骗图像,有效地降低了噪声对HOG特征描述符的影响。然后,使用提取的行人特征来训练SVM分类器。另外,为了优化SVM分类器,该模型对误识别的行人区域进行二次训练。最终的实验结果表明,PDMTF模型的行人假检测率仅为7%,在复杂环境中具有良好的行人识别率。

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