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  4. Managing Uncertainty of AI-based Perception for Autonomous Systems
 
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2019
Conference Paper
Titel

Managing Uncertainty of AI-based Perception for Autonomous Systems

Abstract
With the advent of autonomous systems, machine perception is a decisive safety-critical part to make such systems become reality. However, presently used AI-based perception does not meet the required reliability for usage in real-world systems beyond prototypes, as for autonomous cars. In this work, we describe the challenge of reliable perception for autonomous systems. Furthermore, we identify methods and approaches to quantify the uncertainty of AI-based perception. Along with dynamic management of the safety, we show a path to how uncertainty information can be utilized for the perception, so that it will meet the high dependability demands of life-critical autonomous systems.
Author(s)
Henne, Maximilian
Fraunhofer-Institut für Eingebettete Systeme und Kommunikationstechnik ESK
Schwaiger, Adrian
Fraunhofer-Institut für Eingebettete Systeme und Kommunikationstechnik ESK
Weiß, Gereon
Fraunhofer-Institut für Eingebettete Systeme und Kommunikationstechnik ESK
Hauptwerk
Workshop on Artificial Intelligence Safety, AISafety 2019. Proceedings. Online resource
Konferenz
Workshop on Artificial Intelligence Safety (AISafety) 2019
International Joint Conference on Artificial Intelligence (IJCAI) 2019
DOI
10.24406/publica-fhg-405082
File(s)
N-555261.pdf (146.83 KB)
Language
English
google-scholar
ESK
Tags
  • uncertainty estimation neural networks

  • uncertainty estimation

  • neural network

  • perception

  • safety autonomous system

  • safety

  • autonomous system

  • Bayesian neural network

  • BNN

  • dynamic dependability management

  • artificial intelligence

  • AI

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