BOSTON UNIVERSITY GRADUATE SCHOOL OF ARTS AND SCIENCES AN IMPROVED ROBUST FUZZY EXTRACTOR by
نویسندگان
چکیده
We consider the problem of building robust fuzzy extractors, which allow two parties holding similar random variables W , W ′ to agree on a secret key R in the presence of an active adversary. Robust fuzzy extractors were defined by Dodis et al. in Crypto 2006 [6] to be noninteractive, i.e., only one message P , which can be modified by an unbounded adversary, can pass from one party to the other. This allows them to be used by a single party at different points in time (e.g., for key recovery or biometric authentication), but also presents an additional challenge: what if R is used, and thus possibly observed by the adversary, before the adversary has a chance to modify P . Fuzzy extractors secure against such a strong attack are called post-application robust. We construct a fuzzy extractor with post-application robustness that extracts a shared secret key of up to (2m−n)/2 bits (depending on error-tolerance and security parameters), where n is the bit-length and m is the entropy of W . The previously best known result, also of Dodis et al., [6] extracted up to (2m− n)/3 bits (depending on the same parameters).
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*Department of Molecular Microbiology & Immunology, Brown IMSD Program, and Brown MARC Program, Division of Biology & Medicine, Brown University, Providence, RI 02912; †IMSD Program, College of Science & Mathematics, University of Massachusetts Boston, Boston, MA 02125-3393; ‡Department of Integrative Physiology & Pathobiology, Graduate Program in Immunology, and Tufts PREP Program, Tufts Unive...
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