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High-Level Interpretation of Urban Road Maps Fusing Deep Learning-Based Pixelwise Scene Segmentation and Digital Navigation Maps

机译:融合基于深度学习的像素场景分割和数字导航地图的城市路线图的高级解释

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This paper addresses the problem of high-level road modeling for urban environments. Current approaches are based on geometric models that lit well to the road shape for narrow roads. However, urban environments are more complex and those models are not suitable for inner city intersections or other urban situations. The approach presented in this paper generates a model based on the information provided by a digital navigation map and a vision-based sensing module. On the one hand, the digital map includes data about the road type (residential, highway, intersection, etc.), road shape, number of lanes, and other context information such as vegetation areas, parking slots, and railways. On the other hand, the sensing module provides a pixelwise segmentation of the road using a ResNet-101 CNN with random data augmentation, as well as other hand-crafted features such as curbs, road markings, and vegetation. The high-level interpretation module is designed to learn the best set of parameters of a function that maps all the available features to the actual parametric model of the urban road, using a weighted F-score as a cost function to be optimized. We show that the presented approach eases the maintenance of digital maps using crowd-sourcing, due to the small number of data to send, and adds important context information to traditional road detection systems.
机译:本文解决了针对城市环境的高级道路建模问题。当前的方法基于几何模型,可以很好地适应狭窄道路的道路形状。但是,城市环境更加复杂,并且这些模型不适合内城区交叉口或其他城市情况。本文提出的方法基于数​​字导航图和基于视觉的传感模块提供的信息生成模型。一方面,数字地图包含有关道路类型(住宅,高速公路,十字路口等),道路形状,车道数量以及其他上下文信息(例如植被区域,停车位和铁路)的数据。另一方面,感测模块使用具有随机数据增强功能的ResNet-101 CNN以及其他手工制作的功能(如路缘石,道路标记和植被)来提供道路的像素分割。高级解释模块旨在学习功能的最佳参数集,该功能使用加权F得分作为要优化的成本函数,将所有可用特征映射到城市道路的实际参数模型。我们显示,由于要发送的数据量少,因此提出的方法可简化使用众包维护的数字地图的维护,并为传统的道路检测系统添加重要的上下文信息。

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