基于慢特征分析的单目道路分割

Tobias Kühnl, F. Kummert, J. Fritsch
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引用次数: 52

摘要

本文介绍了一种利用单目摄像机进行道路检测的新方法。我们提出了一种两步方法,将基于补丁的分割与附加的边界检测相结合。我们使用慢特征分析(SFA)来改进补丁级道路和非道路部件的外观描述符。从慢阶特征中形成低阶特征集,并结合颜色特征和Walsh Hadamard纹理特征训练基于patch的绅士boost分类器。这样就可以以一定的置信度从图像中提取与道路对应的区域。通常,道路和非道路之间的边界区域具有最高的分类错误率,因为在斑块级别上很难区分外观。因此,我们提出了一种后处理步骤,在图像的边界区域应用专门的分类器来改善分割结果。为了评估道路分割的质量,我们提出了一种基于应用程序的质量测量方法,通过对图像进行逆透视映射来获得鸟瞰图(BEV)。这种方法的优点是,在现实世界中,道路的重要的远处部分和边界在透视图像中只占很小的一部分,在这种度量度量中可以比在像素级上更好地评估。此外,由于高级驾驶辅助系统(ADAS)需要度量信息,我们估计了驾驶走廊宽度和边界误差。对于不同道路和天气条件下的所有评估,与基本分割相比,我们的系统显示出两步方法的改进性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monocular road segmentation using slow feature analysis
In this paper a novel approach for road detection with a monocular camera is introduced. We propose a two step approach, combining a patch-based segmentation with additional boundary detection. We use Slow Feature Analysis (SFA) which leads to improved appearance descriptors for road and non-road parts on patch level. From the slow features a low order feature set is formed which is used together with color and Walsh Hadamard texture features to train a patch-based GentleBoost classifier. This allows extracting areas from the image that correspond to the road with a certain confidence. Typically the border regions between road and non-road have the highest classification error rates, because the appearance is hard to distinguish on the patch level. Therefore we propose a post-processing step with a specialized classifier applied to the boundary region of the image to improve the segmentation results. In order to evaluate the quality of road segmentation we propose an application-based quality measurement applying an inverse perspective mapping on the image to obtain a Birds Eye View (BEV). The advantage of this approach is that the important distant parts and boundaries of the road in the real world, which are only a low fraction in the perspective image, can be assessed in this metric measure significantly better than on the pixel level. In addition, we estimate the driving corridor width and boundary error, because for Advanced Driver Assistant Systems (ADAS) metric information is needed. For all evaluations in different road and weather conditions, our system shows an improved performance of the two step approach compared to the basic segmentation.
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