Towards Self-Supervised High Level Sensor Fusion

02/12/2019
by   Qadeer Khan, et al.
0

In this paper, we present a framework to control a self-driving car by fusing raw information from RGB images and depth maps. A deep neural network architecture is used for mapping the vision and depth information, respectively, to steering commands. This fusion of information from two sensor sources allows to provide redundancy and fault tolerance in the presence of sensor failures. Even if one of the input sensors fails to produce the correct output, the other functioning sensor would still be able to maneuver the car. Such redundancy is crucial in the critical application of self-driving cars. The experimental results have showed that our method is capable of learning to use the relevant sensor information even when one of the sensors fail without any explicit signal.

READ FULL TEXT

page 3

page 4

page 5

research
03/13/2017

Sensor Fusion for Robot Control through Deep Reinforcement Learning

Deep reinforcement learning is becoming increasingly popular for robot c...
research
10/08/2022

Reliability of fault-tolerant system architectures for automated driving systems

Automated driving functions at high levels of autonomy operate without d...
research
09/14/2021

Detecting Safety Problems of Multi-Sensor Fusion in Autonomous Driving

Autonomous driving (AD) systems have been thriving in recent years. In g...
research
09/10/2020

Self-supervised Depth Denoising Using Lower- and Higher-quality RGB-D sensors

Consumer-level depth cameras and depth sensors embedded in mobile device...
research
05/22/2018

Towards Inverse Sensor Mapping in Agriculture

In recent years, the drive of the Industry 4.0 initiative has enriched i...
research
01/03/2021

UPSLAM: Union of Panoramas SLAM

We present an empirical investigation of a new mapping system based on a...
research
10/22/2020

Atlas Fusion – Modern Framework for Autonomous Agent Sensor Data Fusion

In this paper, we present our new sensor fusion framework for self-drivi...

Please sign up or login with your details

Forgot password? Click here to reset