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  4. Considering Reliability of Deep Learning Function to Boost Data Suitability and Anomaly Detection
 
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2020
Conference Paper
Title

Considering Reliability of Deep Learning Function to Boost Data Suitability and Anomaly Detection

Abstract
The increased demand of Deep Neural Networks (DNNs) in safety-critical systems, such as autonomous vehicles, leads to increasing importance of training data suitability. Firstly, we focus on how to extract the relevant data content for ensuring DNN reliability. Then, we identify error categories and propose mitigation measures with emphasis on data suitability. Despite all efforts to boost data suitability, not all possible variations of a real application can be identified. Hence, we analyse the case of unknown out-of-distribution data. In this case, we suggest to complement data suitability with online anomaly detection using FACER that supervises the behaviour of the DNN.
Author(s)
Gauerhof, Lydia
Hagiwara, Yuki
Schorn, Christoph
Trapp, Mario  
Fraunhofer-Institut für Kognitive Systeme IKS  
Mainwork
IEEE 31th International Symposium on Software Reliability Engineering Workshops, ISSREW 2020. Proceedings  
Conference
International Symposium on Software Reliability Engineering (ISSRE) 2020  
International Workshop on Reliability and Security Data Analysis (RSDA) 2020  
DOI
10.1109/ISSREW51248.2020.00081
Language
English
Fraunhofer-Institut für Kognitive Systeme IKS  
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