Digesting Network Traffic for Forensic Investigation Using Digital Signal Processing Techniques
S.Mohammad Hosseini, Amirhossein Jahangir, Mehdi Kazemi

TL;DR
This paper introduces DSPAS, a novel network traffic digesting system using digital signal processing techniques, which improves payload attribution accuracy and efficiency for forensic investigations over existing Bloom filter-based methods.
Contribution
The paper presents DSPAS, a new payload attribution system leveraging DSP techniques, offering lower false positives and faster wildcard query responses compared to prior Bloom filter-based approaches.
Findings
DSPAS achieves lower false positive rates.
DSPAS outperforms previous schemes in response time for wildcard queries.
DSPAS can detect similar strings, preventing insider evasion.
Abstract
One of the most important practices of cybercrime investigations is to search a network traffic history for an excerpt of traffic, such as the disclosed information of an organization or a worm signature. In post-mortem investigations, criminals and targets are detected by attributing the excerpt to payloads of traffic flows. Since it is impossible to store the high volume of data related to long-term traffic history, payload attribution systems (PAS) based on storing a compact digest of traffic using Bloom filters have been presented in the literature. In these systems, querying the stored digest for an excerpt results in a low number of suspects instead of certain criminals. In this paper, we present a different PAS which is based on simple and widespread digital signal processing techniques. Our traffic digesting scheme has been inspired by DSP-based compression algorithms. The…
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