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典型文献
ovAFLow:Detecting Memory Corruption Bugs with Fuzzing-Based Taint Inference
文献摘要:
Grey-box fuzzing is an effective technology to detect software vulnerabilities,such as memory corruption.Previous fuzzers in detecting memory corruption bugs either use heavy-weight analysis,or use techniques which are not customized for memory corruption detection.In this paper,we propose a novel memory bug guided fuzzer,ovAFLow.To begin with,we broaden the memory corruption targets where we frequently identify bugs.Next,ovAFLow utilizes light-weight and effective methods to build connections between the fuzzing inputs and these corruption targets.Based on the connection results,ovAFLow uses customized techniques to direct the fuzzing process closer to memory corruption.We evaluate ovAFLow against state-of-the-art fuzzers,including AFL(american fuzzy lop),AFLFast,FairFuzz,QSYM,Angora,TIFF,and TortoiseFuzz.The evaluation results show better vulnerability detection ability of ovAFLow,and the performance overhead is acceptable.Moreover,we identify 12 new memory corruption bugs and two CVEs(common vulnerability exposures)with the help of ovAFLow.
文献关键词:
作者姓名:
Gen Zhang;Peng-Fei Wang;Tai Yue;Xiang-Dong Kong;Xu Zhou;Kai Lu
作者机构:
College of Computer Science and Technology,National University of Defense Technology,Changsha 410073,China
引用格式:
[1]Gen Zhang;Peng-Fei Wang;Tai Yue;Xiang-Dong Kong;Xu Zhou;Kai Lu-.ovAFLow:Detecting Memory Corruption Bugs with Fuzzing-Based Taint Inference)[J].计算机科学技术学报(英文版),2022(02):405-422
A类:
ovAFLow,Corruption,Bugs,Taint,fuzzing,fuzzers,fuzzer,lop,AFLFast,FairFuzz,QSYM,Angora,TortoiseFuzz,CVEs
B类:
Detecting,Memory,Fuzzing,Based,Inference,Grey,box,effective,technology,software,vulnerabilities,such,memory,corruption,Previous,detecting,bugs,either,heavy,weight,analysis,techniques,which,not,customized,detection,this,paper,propose,novel,guided,begin,broaden,targets,where,frequently,identify,Next,utilizes,light,methods,build,connections,between,inputs,these,results,uses,direct,process,closer,We,evaluate,against,state,art,including,american,fuzzy,TIFF,evaluation,show,better,vulnerability,performance,overhead,acceptable,Moreover,new,two,common,exposures,help
AB值:
0.417405
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