Title
Classification Of Sensor Errors For The Statistical Simulation Of Environmental Perception In Automated Driving Systems
Abstract
A virtual world provides a completely controlled and safe testing environment for the development and testing of current and future automated driving systems. In order to provide conditions close to reality, the input data for the automated driving system generated by sensors for environmental perception have to match closely between virtual and real world. The data gathered by perception sensors like radar, lidar or camera sensors generally provide a lossy description of the environment. Therefore, a sensor error model has to be employed that captures the characteristics of the sensory perception process. We propose a general description of a statistical sensor model, constructed to achieve equivalent sensor output on a statistical level. To construct the model, we define model units that each deal with a specific aspect of the sensory perception process on the object level. We propose a classification scheme and hierarchy for the different error types and describe a methodology for using real world reference data as input for the statistical model.
Year
Venue
Field
2016
2016 IEEE 19TH INTERNATIONAL CONFERENCE ON INTELLIGENT TRANSPORTATION SYSTEMS (ITSC)
Radar,Reference data (financial markets),Data modeling,Computer vision,Lossy compression,Image sensor,Simulation,Measurement uncertainty,Statistical model,Artificial intelligence,Engineering,Perception
DocType
Citations 
PageRank 
Conference
0
0.34
References 
Authors
0
6
Name
Order
Citations
PageRank
Timo Hanke100.68
Nils Hirsenkorn200.68
Bernhard Dehlink300.34
Andreas Rauch4383.43
Ralph H. Rasshofer5171.68
Erwin M. Biebl622.19