Hardware Trust and Assurance through Reverse Engineering: A Tutorial and Outlook from Image Analysis and Machine Learning Perspectives
Ulbert J. Botero(University of Florida), Domenic Forte(University of Connecticut), Damon L. Woodard(University of Florida), Mark Tehranipoor(University of Connecticut), Mir Tanjidur Rahman(University of Florida), Hangwei Lu(University of Florida), Mukhil A. Mallaiyan(University of Florida), Navid Asadizanjani(University of Connecticut), Ronald S. Wilson(University of Florida), Fatemeh Ganji(Worcester Polytechnic Institute)
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