论文标题

利用辅助转向任务利用道路区域语义细分

Leveraging Road Area Semantic Segmentation with Auxiliary Steering Task

论文作者

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

论文摘要

不同模式识别方法的鲁棒性是自动驾驶中的主要挑战之一,尤其是在各种道路环境和天气条件(例如碎石路和降雪)中驾驶时。尽管可以使用配备有传感器的汽车从这些不利条件中收集数据,但要注释数据以进行培训是非常乏味的。在这项工作中,我们解决了这一限制,并提出了一种基于CNN的方法,该方法可以利用方向盘角度信息来改善道路区域语义分割。由于可以使用相关图像轻松获取方向盘角度数据,因此可以通过在没有手动数据注释的新道路环境中收集数据来提高道路区域语义分割的准确性。我们证明了拟议方法对自动驾驶的两个具有挑战性的数据集的有效性,并表明当我们的分割模型培训中使用转向任务时,与相应的参考转移学习模型相比,MIOU(平均值与联盟的平均交叉路口)在MIOU(平均交叉点)中的有效性会导致0.1-2.9%的增长。

Robustness of different pattern recognition methods is one of the key challenges in autonomous driving, especially when driving in the high variety of road environments and weather conditions, such as gravel roads and snowfall. Although one can collect data from these adverse conditions using cars equipped with sensors, it is quite tedious to annotate the data for training. In this work, we address this limitation and propose a CNN-based method that can leverage the steering wheel angle information to improve the road area semantic segmentation. As the steering wheel angle data can be easily acquired with the associated images, one could improve the accuracy of road area semantic segmentation by collecting data in new road environments without manual data annotation. We demonstrate the effectiveness of the proposed approach on two challenging data sets for autonomous driving and show that when the steering task is used in our segmentation model training, it leads to a 0.1-2.9% gain in the road area mIoU (mean Intersection over Union) compared to the corresponding reference transfer learning model.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源