基于等高拼接图像的实时车辆检测

Min-Woo Park, J. Park, Soon Ki Jung
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引用次数: 7

摘要

在本文中,我们提出了一种实时前向车辆检测预警系统,该系统使用一种新颖的图像表示称为等高拼接图像。该系统使用基于GPU(图形处理单元)的方法对从单个摄像机捕获的道路场景图像进行实时处理。等高拼接图像在不降低检测精度的前提下,提高了现有gpu加速方法的执行时间。等高图像生成如下。在使用消失点和地平线对道路场景进行几何分析之后,我们以均匀的间隔对道路上的几个位置进行采样,从而裁剪出一组图像条带。通过将车辆的预定高度投影到图像平面上,计算每个图像条的高度。在将所有裁剪的图像调整到构建等高图像所需的统一高度后,我们将这些调整大小的图像连接起来,类似于全景图像,以创建等高拼接图像。拼接图像的宽度很长,但图像的高度是一致的。然后,该系统使用基于一维搜索的支持向量机(SVM)分类,对连接的图像执行基于gpu的车辆检测。由于减少了搜索面积,该方法比基于gpu的OpenCV HOG检测器更快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time vehicle detection using equi-height mosaicking image
In this paper, we present a real-time forward vehicle detection warning system using a novel image representation called an equi-height mosaicking image. The proposed system uses a GPU (graphic processing unit) based approach for the real-time processing of a road scene image captured from a single camera. The equi-height mosaicking image improves the execution time of the existing GPU-based acceleration approach without decreasing the detection accuracy. The equi-height image is generated as follows. After a geometric analysis of a road scene using the vanishing point and horizon, we crop a set of image strips by sampling several positions on the road at uniform intervals. The height of each image strip is computed by projecting the predefined height of a vehicle at a distant position onto an image plane. After all the cropped images are resized to the uniform height required to build the equi-height image, we concatenate these resized images, similar to a panorama image, to create the equi-height mosaicking image. The concatenated image has a long width but the height of the image is uniform. The proposed system then performs a GPU-based vehicle detection on the concatenated image using a 1D search based support vector machine (SVM) classification. The proposed method is faster than the GPU-based OpenCV HOG detector because of the reduced search area.
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