论文标题

在不良道路和天气条件下自动转向的多模式端到端学习

Multimodal End-to-End Learning for Autonomous Steering in Adverse Road and Weather Conditions

论文作者

Maanpää, Jyri, Taher, Josef, Manninen, Petri, Pakola, Leo, Melekhov, Iaroslav, Hyyppä, Juha

论文摘要

在不利的道路和可能没有车道线的天气条件下,自动驾驶具有挑战性,道路可能被雪覆盖,可见度可能很差。我们扩展了先前关于自主转向的端到端学习的工作,以在这些不利的现实生活条件下使用多模式数据进行操作。我们在几条道路和天气条件下收集了28个小时的驾驶数据,并训练有训练的卷积神经网络,以预测前置彩色相机图像以及激光雷达范围和反射率数据的汽车方向盘角度。我们根据不同模式比较了CNN模型性能,我们的结果表明,激光雷达模态改善了不同多模式传感器融合模型的性能。我们还使用不同的模型进行了道路测试,它们支持这一观察结果。

Autonomous driving is challenging in adverse road and weather conditions in which there might not be lane lines, the road might be covered in snow and the visibility might be poor. We extend the previous work on end-to-end learning for autonomous steering to operate in these adverse real-life conditions with multimodal data. We collected 28 hours of driving data in several road and weather conditions and trained convolutional neural networks to predict the car steering wheel angle from front-facing color camera images and lidar range and reflectance data. We compared the CNN model performances based on the different modalities and our results show that the lidar modality improves the performances of different multimodal sensor-fusion models. We also performed on-road tests with different models and they support this observation.

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