Environmental disturbances, such as sensor data noises, various lighting conditions, challenging weathers and external adversarial perturbations, are inevitable in real self-driving applications. Existing researches and testings have shown that they can severely influence the vehicles perception ability and performance, one of the main issue is the false positive detection, i.e., the ghost object which is not real existed or occurs in the wrong position (such as a non-existent vehicle). Traditional navigation methods tend to avoid every detected objects for safety, however, avoiding a ghost object may lead the vehicle into a even more dangerous situation, such as a sudden break on the highway. Considering the various disturbance types, it is difficult to address this issue at the perceptual aspect. A potential solution is to detect the ghost through relation learning among the whole scenario and develop an integrated end-to-end navigation system. Our underlying logic is that the behavior of all vehicles in the scene is influenced by their neighbors, and normal vehicles behave in a logical way, while ghost vehicles do not. By learning the spatio-temporal relation among surrounding vehicles, an information reliability representation is learned for each detected vehicle and then a robot navigation network is developed. In contrast to existing works, we encourage the network to learn how to represent the reliability and how to aggregate all the information with uncertainties by itself, thus increasing the efficiency and generalizability. To the best of the authors knowledge, this paper provides the first work on using graph relation learning to achieve end-to-end robust navigation in the presence of ghost vehicles. Simulation results in the CARLA platform demonstrate the feasibility and effectiveness of the proposed method in various scenarios.


翻译:暂无翻译

0
下载
关闭预览

相关内容

FlowQA: Grasping Flow in History for Conversational Machine Comprehension
专知会员服务
34+阅读 · 2019年10月18日
Stabilizing Transformers for Reinforcement Learning
专知会员服务
60+阅读 · 2019年10月17日
Transferring Knowledge across Learning Processes
CreateAMind
29+阅读 · 2019年5月18日
Unsupervised Learning via Meta-Learning
CreateAMind
43+阅读 · 2019年1月3日
STRCF for Visual Object Tracking
统计学习与视觉计算组
15+阅读 · 2018年5月29日
Focal Loss for Dense Object Detection
统计学习与视觉计算组
12+阅读 · 2018年3月15日
IJCAI | Cascade Dynamics Modeling with Attention-based RNN
KingsGarden
13+阅读 · 2017年7月16日
国家自然科学基金
13+阅读 · 2017年12月31日
国家自然科学基金
3+阅读 · 2015年12月31日
国家自然科学基金
2+阅读 · 2015年12月31日
国家自然科学基金
0+阅读 · 2014年12月31日
VIP会员
相关资讯
Transferring Knowledge across Learning Processes
CreateAMind
29+阅读 · 2019年5月18日
Unsupervised Learning via Meta-Learning
CreateAMind
43+阅读 · 2019年1月3日
STRCF for Visual Object Tracking
统计学习与视觉计算组
15+阅读 · 2018年5月29日
Focal Loss for Dense Object Detection
统计学习与视觉计算组
12+阅读 · 2018年3月15日
IJCAI | Cascade Dynamics Modeling with Attention-based RNN
KingsGarden
13+阅读 · 2017年7月16日
相关基金
国家自然科学基金
13+阅读 · 2017年12月31日
国家自然科学基金
3+阅读 · 2015年12月31日
国家自然科学基金
2+阅读 · 2015年12月31日
国家自然科学基金
0+阅读 · 2014年12月31日
Top
微信扫码咨询专知VIP会员