Abstract

Greybox fuzzing is a widely used technique for software testing that has been adopted by practitioners and researchers to disclose a great number of vulnerabilities in various software. However, adversaries also weaponize greybox fuzzing to mine vulnerabilities for malicious intentions. This poses considerable threats to software systems. To counteract the misuse of greybox fuzzing, we propose VALL-NUT, a novel approach to harden software with properties to combat greybox fuzzing. We dissect the major strategies that facilitate the success of greybox fuzzing, and accordingly propose three types of neutralizing schemesseed queue explosion, seed attenuation, and feedback contamination. We evaluate Vall-nut against the mainstream greybox fuzzers on multiple real-world benchmark programs. The results show that Vall-nut can reduce an average of 34 % code coverage and 76% detected crashes in 24-hour tests. Moreover, we conduct comparisons with two recent studies which show Vall-nut can achieve a superior deduction of detected crashes.

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