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Robust and fast pedestrian detection method for far-infrared automotive driving assistance systems

机译:远红外汽车驾驶辅助系统的鲁棒快速行人检测方法

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Despite considerable effort has been contributed to night-time pedestrian detection for automotive driving assistance systems recent years, robust and real-time pedestrian detection is by no means a trivial task and is still underway due to the moving cameras, uncontrolled outdoor environments, wide range of possible pedestrian presentations and the stringent performance criteria for automotive applications. This paper presents an alternative night-time pedestrian detection method using monocular far-infrared (FIR) camera, which includes two modules (regions of interest (ROIs) generation and pedestrian recognition) in a cascade fashion. Pixel-gradient oriented vertical projection is first proposed to estimate the vertical image stripes that might contain pedestrians, and then local thresholding image segmentation is adopted to generate ROIs more accurately within the estimated vertical stripes. A novel descriptor called PEWHOG (pyramid entropy weighted histograms of oriented gradients) is proposed to represent FIR pedestrians in recognition module. Specifically, PEWHOG is used to capture both the local object shape described by the entropy weighted distribution of oriented gradient histograms and its pyramid spatial layout. Then PEWHOG is fed to a three-branch structured classifier using support vector machines (SVM) with histogram intersection kernel (HIK). An off-line training procedure combining both the bootstrapping and early-stopping strategy is introduced to generate a more robust classifier by exploiting hard negative samples iteratively. Finally, multi-frame validation is utilized to suppress some transient false positives. Experimental results on FIR video sequences from various scenarios demonstrate that the presented method is effective and promising
机译:尽管近年来在汽车驾驶辅助系统的夜间行人检测方面做出了巨大努力,但强大的实时行人检测绝非易事,由于移动的摄像头,不受控制的室外环境和广泛的使用范围,仍在进行中可能的行人演示以及针对汽车应用的严格性能标准。本文提出了一种使用单眼远红外(FIR)相机的替代夜间行人检测方法,该方法以级联方式包括两个模块(感兴趣区域(ROI)生成和行人识别)。首先提出了面向像素梯度的垂直投影,以估计可能包含行人的垂直图像条纹,然后采用局部阈值图像分割,以在估计的垂直条纹内更准确地生成ROI。提出了一种新颖的描述符PEWHOG(定向梯度的金字塔熵加权直方图)来表示识别模块中的FIR行人。具体而言,PEWHOG用于捕获由定向梯度直方图的熵加权分布描述的局部对象形状及其金字塔空间布局。然后将PEWHOG使用带有直方图交点内核(HIK)的支持向量机(SVM)馈送到三分支结构的分类器。引入了一种结合了自举和早期停止策略的离线训练程序,以通过迭代利用硬性负样本来生成更强大的分类器。最后,利用多帧验证来抑制某些瞬态误报。来自各种场景的FIR视频序列的实验结果表明,所提出的方法是有效且有希望的

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