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Research of Pedestrian Detection for Intelligent Vehicle Based on Machine Vision

机译:基于机器视觉的智能车辆行人检测研究

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Efficiently and accurately detecting pedestrian plays a very important role in many computer vision applications such as Intelligent Transportation System and Safety Driving Assistant. This paper puts forwards a two-stage pedestrian detection method based on machine vision. Firstly, the expanded Haar-like characteristic is selected and calculated using integral map and the pedestrian detection cascaded classifiers with high accuracy are trained by Adaboost. After segmenting the candidate pedestrian areas from the image, a confirmation step is needed to judge whether those areas are pedestrian or not. Through analyzing the sample images, we can know that the gray image of pedestrian has some texture and gray symmetry features. In addition, the continuous edges of pedestrian make the extracted edges have certain boundary moments and gradient direction characters. Based on these features, each sample image is expressed by a multi-dimension characteristic vector. The final pedestrian classifier is obtained using support vector machines (SVM) training with the features abstracted above. The experiment results indicate that the algorithm could achieve effective recognition of vehicle proceeding pedestrians with different sizes, colors and shapes.
机译:在许多计算机视觉应用程序中,例如智能运输系统和安全驾驶助手,有效,准确地检测行人起着非常重要的作用。提出了一种基于机器视觉的两阶段行人检测方法。首先,使用积分图选择和计算扩展后的类似Haar的特征,Adaboost训练了具有高精度的行人检测级联分类器。从图像中分割出候选行人区域后,需要一个确认步骤来判断这些行人区域是否为行人区域。通过对样本图像的分析,我们可以知道行人的灰度图像具有一定的纹理和灰度对称特征。另外,行人的连续边缘使提取的边缘具有一定的边界矩和梯度方向特征。基于这些特征,每个样本图像都由多维特征向量表示。最终的行人分类器是使用支持向量机(SVM)训练获得的,具有上述抽象的特征。实验结果表明,该算法可以有效识别大小,颜色,形状不同的行人。

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