Bytewise Approximate Matching: The Good, The Bad, and The Unknown

Details

Serval ID
serval:BIB_D5DB4210D3CC
Type
Article: article from journal or magazin.
Collection
Publications
Title
Bytewise Approximate Matching: The Good, The Bad, and The Unknown
Journal
Journal of Digital Forensics, Security and Law
Author(s)
Harichandran Vikram, Breitinger Frank, Baggili Ibrahim
ISSN
1558-7223
Publication state
Published
Issued date
2016
Volume
11
Number
2
Language
english
Abstract
Hash functions are established and well-known in digital forensics, where they are commonly used for proving integrity and file identification (i.e., hash all files on a seized device and compare the fingerprints against a reference database). However, with respect to the latter operation, an active adversary can easily overcome this approach because traditional hashes are designed to be sensitive to altering an input; output will significantly change if a single bit is flipped. Therefore, researchers developed approximate matching, which is a rather new, less prominent area but was conceived as a more robust counterpart to traditional hashing. Since the conception of approximate matching, the community has constructed numerous algorithms, extensions, and additional applications for this technology, and are still working on novel concepts to improve the status quo. In this survey article, we conduct a high-level review of the existing literature from a non-technical perspective and summarize the existing body of knowledge in approximate matching, with special focus on bytewise algorithms. Our contribution allows researchers and practitioners to receive an overview of the state of the art of approximate matching so that they may understand the capabilities and challenges of the field. Simply, we present the terminology, use cases, classification, requirements, testing methods, algorithms, applications, and a list of primary and secondary literature.
Keywords
Approximate matching, Fuzzy hashing, Similarity hashing, Bytewise, Survey
Open Access
Yes
Create date
06/05/2021 12:01
Last modification date
06/05/2021 12:20
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