Matches in SemOpenAlex for { <https://semopenalex.org/work/W4367835850> ?p ?o ?g. }
Showing items 1 to 74 of
74
with 100 items per page.
- W4367835850 endingPage "103287" @default.
- W4367835850 startingPage "103287" @default.
- W4367835850 abstract "The Internet of Things (IoT) is used in many fields that generate sensitive data, such as healthcare and surveillance. The increased reliance on IoT raised serious information security concerns. As IoT traffic is often compressed to optimize resource consumption, sending compressed data without encryption is a significant security risk for violating confidentiality, integrity, and privacy, as the data can be decompressed, read, and modified. The randomization generated by data compression can complicate classifying compressed data from encrypted data. Encrypted and compressed traffic classification is crucial for the security and forensic analysis of IoT implementations. Existing encrypted and compressed data classification approaches suffer from various limitations. This work proposes two Deep Learning (DL) systems to enhance traffic classification with an emphasis on reducing the possibility of falsely classifying compressed traffic as encrypted. The first approach is Engineered Features Classification (EFC), which uses a set of statistical tests. The second approach is Raw Data and Engineered Features Classification (RDEFC), which combines raw data and statistical tests to improve the classification of encrypted and compressed traffic. Our work also addresses the complexity of classifying encrypted samples of compressed files, such as encrypted JPG images. A large dataset is built in this work with different file types, which include TXT, HTML, WAV, PDF, and JPG. Our evaluation results show high performance for the EFC system with classification 80.94% accuracy. The RDEFC system has a significant improvement over the former with 90.55% classification accuracy. Our approaches outperform systems reported in the literature with similar configurations." @default.
- W4367835850 created "2023-05-04" @default.
- W4367835850 creator A5020731194 @default.
- W4367835850 creator A5024854717 @default.
- W4367835850 creator A5033732336 @default.
- W4367835850 creator A5053194103 @default.
- W4367835850 date "2023-07-01" @default.
- W4367835850 modified "2023-10-16" @default.
- W4367835850 title "Combining raw data and engineered features for optimizing encrypted and compressed internet of things traffic classification" @default.
- W4367835850 cites W1572063013 @default.
- W4367835850 cites W1978780689 @default.
- W4367835850 cites W1995875735 @default.
- W4367835850 cites W1997212977 @default.
- W4367835850 cites W2027166822 @default.
- W4367835850 cites W2069353545 @default.
- W4367835850 cites W2117991511 @default.
- W4367835850 cites W2150423842 @default.
- W4367835850 cites W2897202622 @default.
- W4367835850 cites W2971435671 @default.
- W4367835850 cites W3036399259 @default.
- W4367835850 cites W3099803329 @default.
- W4367835850 cites W3103145119 @default.
- W4367835850 cites W4241956871 @default.
- W4367835850 cites W4253081834 @default.
- W4367835850 cites W4288057897 @default.
- W4367835850 doi "https://doi.org/10.1016/j.cose.2023.103287" @default.
- W4367835850 hasPublicationYear "2023" @default.
- W4367835850 type Work @default.
- W4367835850 citedByCount "0" @default.
- W4367835850 crossrefType "journal-article" @default.
- W4367835850 hasAuthorship W4367835850A5020731194 @default.
- W4367835850 hasAuthorship W4367835850A5024854717 @default.
- W4367835850 hasAuthorship W4367835850A5033732336 @default.
- W4367835850 hasAuthorship W4367835850A5053194103 @default.
- W4367835850 hasConcept C124101348 @default.
- W4367835850 hasConcept C124851039 @default.
- W4367835850 hasConcept C132964779 @default.
- W4367835850 hasConcept C148730421 @default.
- W4367835850 hasConcept C154945302 @default.
- W4367835850 hasConcept C199360897 @default.
- W4367835850 hasConcept C38652104 @default.
- W4367835850 hasConcept C41008148 @default.
- W4367835850 hasConcept C58489278 @default.
- W4367835850 hasConceptScore W4367835850C124101348 @default.
- W4367835850 hasConceptScore W4367835850C124851039 @default.
- W4367835850 hasConceptScore W4367835850C132964779 @default.
- W4367835850 hasConceptScore W4367835850C148730421 @default.
- W4367835850 hasConceptScore W4367835850C154945302 @default.
- W4367835850 hasConceptScore W4367835850C199360897 @default.
- W4367835850 hasConceptScore W4367835850C38652104 @default.
- W4367835850 hasConceptScore W4367835850C41008148 @default.
- W4367835850 hasConceptScore W4367835850C58489278 @default.
- W4367835850 hasFunder F4320306076 @default.
- W4367835850 hasFunder F4320306078 @default.
- W4367835850 hasFunder F4320306084 @default.
- W4367835850 hasLocation W43678358501 @default.
- W4367835850 hasOpenAccess W4367835850 @default.
- W4367835850 hasPrimaryLocation W43678358501 @default.
- W4367835850 hasRelatedWork W2293662940 @default.
- W4367835850 hasRelatedWork W2357356423 @default.
- W4367835850 hasRelatedWork W2362737126 @default.
- W4367835850 hasRelatedWork W2367999229 @default.
- W4367835850 hasRelatedWork W2471805634 @default.
- W4367835850 hasRelatedWork W2596589768 @default.
- W4367835850 hasRelatedWork W2794836102 @default.
- W4367835850 hasRelatedWork W2983866626 @default.
- W4367835850 hasRelatedWork W3004905224 @default.
- W4367835850 hasRelatedWork W3086422166 @default.
- W4367835850 hasVolume "130" @default.
- W4367835850 isParatext "false" @default.
- W4367835850 isRetracted "false" @default.
- W4367835850 workType "article" @default.