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Hierarchical Platform for Autonomous Driving

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Published:24 January 2020Publication History
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References

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  • Published in

    cover image ACM Other conferences
    INTESA2019: Proceedings of the INTelligent Embedded Systems Architectures and Applications Workshop 2019
    October 2019
    39 pages
    ISBN:9781450376525
    DOI:10.1145/3372394

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    Publication History

    • Published: 24 January 2020

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