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GPU-Based Real-Time Pedestrian Detection and Tracking Using Equi-Height Mosaicking Image

机译:使用等高拼接图像的基于GPU的实时行人检测和跟踪

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In this paper, we present a GPU-based real-time pedestrian detection and tracking system using a novel image representation called the equi-height mosaicking image. This representation improves the processing time of the existing acceleration approach to pedestrian detection without decreasing accuracy. In equi-height mosaicking image generation, we first detect the horizon and crop a set of image strips from the road at uniform distance intervals. The height of each image strip is computed by projecting the predefined average height of a pedestrian at that distance onto the image plane. Then, all cropped images are resized to a uniform height and concatenated into a panorama image. Next, we detect the pedestrians on an equi-height mosaicking image using 1D based SVM classification. The SVM classifier is trained by an image dataset generated from various heights of pedestrians. After finishing this detection, we track the detected pedestrian in the previous frame. We performed the matching process in the neighbor block area of the equi-height mosaicking image to restrict the computation region. The detected or tracked results mapped onto the original image and grouped into multiple, overlapping regions.
机译:在本文中,我们提出了一种基于GPU的实时行人检测和跟踪系统,该系统使用一种称为等高拼接图像的新颖图像表示形式。该表示改善了行人检测的现有加速方法的处理时间,而不会降低准确性。在等高镶嵌图像生成中,我们首先检测地平线并以均匀的距离间隔从道路上裁剪出一组图像带。通过将行人在该距离上的预定义平均高度投影到图像平面上,可以计算出每个图像带的高度。然后,将所有裁切后的图像调整为统一的高度,然后合并为全景图像。接下来,我们使用基于1D的SVM分类在等高马赛克图像上检测行人。 SVM分类器由从各种高度的行人生成的图像数据集训练。完成此检测后,我们将在前一帧中跟踪检测到的行人。我们在等高拼接图像的相邻块区域中执行了匹配过程,以限制计算区域。检测或跟踪的结果映射到原始图像上,并分组为多个重叠区域。

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