论文标题
使用当地专家的超柱随机森林的非结构化道路细分
Unstructured Road Segmentation using Hypercolumn based Random Forests of Local experts
论文作者
论文摘要
基于单眼的道路检测方法主要基于机器学习方法,依靠分类和提取精度,并遭受外观,照明和天气变化的影响。传统方法将预测引入条件随机字段或马尔可夫随机场模型中,以改善基于结构的中间预测。这些方法是基于优化的,因此资源很重且缓慢,使其不适合实时应用。我们提出了一种使用基于超像素的机器学习功能的本地专家的随机森林分类器来检测和细分道路的方法。随机森林从预先训练的卷积神经网络-VGG-16中吸入机器学习的描述符。这些功能还集中在各自的超级像素中,从而使局部结构保持连续。我们将算法与基于Nueral网络的方法和传统方法(基于手工制作的功能)进行比较,在结构化的道路(Camvid和Kitti)和非结构化的Road数据集上进行了比较。最后,我们介绍了一个带有1000个带注释的图像的公路场景数据集,并验证我们的算法在非城市和农村道路方案中效果很好。
Monocular vision based road detection methods are mostly based on machine learning methods, relying on classification and feature extraction accuracy, and suffer from appearance, illumination and weather changes. Traditional methods introduce the predictions into conditional random fields or markov random fields models to improve the intermediate predictions based on structure. These methods are optimization based and therefore resource heavy and slow, making it unsuitable for real time applications. We propose a method to detect and segment roads with a random forest classifier of local experts with superpixel based machine-learned features. The random forest takes in machine learnt descriptors from a pre-trained convolutional neural network - VGG-16. The features are also pooled into their respective superpixels, allowing for local structure to be continuous. We compare our algorithm against Nueral Network based methods and Traditional approaches (based on Hand-crafted features), on both Structured Road (CamVid and Kitti) and Unstructured Road Datasets. Finally, we introduce a Road Scene Dataset with 1000 annotated images, and verify that our algorithm works well in non-urban and rural road scenarios.