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Safely Entering the Deep: A Review of Verification and Validation for Machine Learning and a Challenge Elicitation in the Automotive Industry
by
Duran, Boris
, Wnuk, Krzysztof
, Levandowski, Christoffer
, Englund, Cristofer
, Gao, Shenjian
, Lönn, Henrik
, Törnqvist, Jonas
, Tan, Yanwen
, Kaijser, Henrik
, Borg, Markus
in
Aerospace safety
/ Artificial intelligence
/ Automobile industry
/ Automotive engineering
/ Computer simulation
/ Knowledge management
/ Machine learning
/ Neural networks
/ Safety critical
/ Software engineering
/ State-of-the-art reviews
2018
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Safely Entering the Deep: A Review of Verification and Validation for Machine Learning and a Challenge Elicitation in the Automotive Industry
by
Duran, Boris
, Wnuk, Krzysztof
, Levandowski, Christoffer
, Englund, Cristofer
, Gao, Shenjian
, Lönn, Henrik
, Törnqvist, Jonas
, Tan, Yanwen
, Kaijser, Henrik
, Borg, Markus
in
Aerospace safety
/ Artificial intelligence
/ Automobile industry
/ Automotive engineering
/ Computer simulation
/ Knowledge management
/ Machine learning
/ Neural networks
/ Safety critical
/ Software engineering
/ State-of-the-art reviews
2018
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Do you wish to request the book?
Safely Entering the Deep: A Review of Verification and Validation for Machine Learning and a Challenge Elicitation in the Automotive Industry
by
Duran, Boris
, Wnuk, Krzysztof
, Levandowski, Christoffer
, Englund, Cristofer
, Gao, Shenjian
, Lönn, Henrik
, Törnqvist, Jonas
, Tan, Yanwen
, Kaijser, Henrik
, Borg, Markus
in
Aerospace safety
/ Artificial intelligence
/ Automobile industry
/ Automotive engineering
/ Computer simulation
/ Knowledge management
/ Machine learning
/ Neural networks
/ Safety critical
/ Software engineering
/ State-of-the-art reviews
2018
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Safely Entering the Deep: A Review of Verification and Validation for Machine Learning and a Challenge Elicitation in the Automotive Industry
Paper
Safely Entering the Deep: A Review of Verification and Validation for Machine Learning and a Challenge Elicitation in the Automotive Industry
2018
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Overview
Deep Neural Networks (DNN) will emerge as a cornerstone in automotive software engineering. However, developing systems with DNNs introduces novel challenges for safety assessments. This paper reviews the state-of-the-art in verification and validation of safety-critical systems that rely on machine learning. Furthermore, we report from a workshop series on DNNs for perception with automotive experts in Sweden, confirming that ISO 26262 largely contravenes the nature of DNNs. We recommend aerospace-to-automotive knowledge transfer and systems-based safety approaches, e.g., safety cage architectures and simulated system test cases.
Publisher
Cornell University Library, arXiv.org
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