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Road marking detection based on structured learning

机译:基于结构化学习的道路标记检测

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Road marking is a key visual cue for driving in structured environments like highways and urban roads. Road marking detection plays an important role in advanced driver assistant systems and autonomous driving. Robust road marking detection is challenging for the variation of road scenes, the degradation of the markings and the changes of the illumination. Traditional algorithms mainly use the grayscale cues or edge cues to detect the markings. However, these approaches are not adaptive to changing environments and the threshold values are hard to select. In this paper, we propose a novel data adaptive structured learning based road marking detection algorithm. A structured random forest is learned to classify each image patch to get a structured label patch. In this way, the contextual information of the images and the structural information of the labels can be effectively exploited to reduce the ambiguity. The channel features including the color name, the normalized gradient magnitude and the histogram of oriented gradient, together with the local self-similarity are extracted as the features of the patches. Experimental results show that the proposed method outperforms the traditional ones.
机译:道路标记是在高速公路和城市道路等结构化环境中行驶的关键视觉提示。道路标记检测在高级驾驶员辅助系统和自动驾驶中起着重要作用。鲁棒的道路标记检测对于道路场景的变化,标记的劣化和照明的变化具有挑战性。传统算法主要使用灰度提示或边缘提示来检测标记。但是,这些方法不适用于不断变化的环境,并且很难选择阈值。在本文中,我们提出了一种新的基于数据自适应结构化学习的道路标记检测算法。学习结构化随机森林以对每个图像补丁进行分类,以获得结构化标签补丁。这样,可以有效地利用图像的上下文信息和标签的结构信息来减少歧义。提取通道特征(包括颜色名称,归一化的梯度量级和定向梯度的直方图)以及局部自相似性作为斑块的特征。实验结果表明,该方法优于传统方法。

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