VISUAL IMAGE-BASED MALWARE DETECTION SYSTEM USING DEEP LEARNING

The escalating strength and complexity of malware threats surpass the capacities of conventional defense systems. Traditional static analysis prevention, although highly accurate in detecting well-known malware, struggles against polymorphism and packaging evasion techniques. Dynamic analysis, on...

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Main Author: Ainun Rofik, Muh.
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/79488
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:79488
spelling id-itb.:794882024-01-06T08:09:10ZVISUAL IMAGE-BASED MALWARE DETECTION SYSTEM USING DEEP LEARNING Ainun Rofik, Muh. Indonesia Theses malware detection, malware classification, deep learning INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/79488 The escalating strength and complexity of malware threats surpass the capacities of conventional defense systems. Traditional static analysis prevention, although highly accurate in detecting well-known malware, struggles against polymorphism and packaging evasion techniques. Dynamic analysis, on the other hand, often yields false positive results at a high frequency. A prospective avenue in the evolution of malware detection involves visual image-based identification. This study pioneers the integration of image-based representation and deep learning for classification to discern the presence of malware. Not only does this approach successfully identify malware, but it also excels in classifying malware based on its family. The test outcomes demonstrate an impressive accuracy of 98.88% in malware detection and 94.40% in malware family classification. This research contributes to the ongoing discourse on enhancing cybersecurity measures by leveraging innovative techniques to combat the relentless evolution of malicious software. As the digital landscape evolves, adopting image-based identification methods offers a promising trajectory for robust and effective malware detection and classification. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description The escalating strength and complexity of malware threats surpass the capacities of conventional defense systems. Traditional static analysis prevention, although highly accurate in detecting well-known malware, struggles against polymorphism and packaging evasion techniques. Dynamic analysis, on the other hand, often yields false positive results at a high frequency. A prospective avenue in the evolution of malware detection involves visual image-based identification. This study pioneers the integration of image-based representation and deep learning for classification to discern the presence of malware. Not only does this approach successfully identify malware, but it also excels in classifying malware based on its family. The test outcomes demonstrate an impressive accuracy of 98.88% in malware detection and 94.40% in malware family classification. This research contributes to the ongoing discourse on enhancing cybersecurity measures by leveraging innovative techniques to combat the relentless evolution of malicious software. As the digital landscape evolves, adopting image-based identification methods offers a promising trajectory for robust and effective malware detection and classification.
format Theses
author Ainun Rofik, Muh.
spellingShingle Ainun Rofik, Muh.
VISUAL IMAGE-BASED MALWARE DETECTION SYSTEM USING DEEP LEARNING
author_facet Ainun Rofik, Muh.
author_sort Ainun Rofik, Muh.
title VISUAL IMAGE-BASED MALWARE DETECTION SYSTEM USING DEEP LEARNING
title_short VISUAL IMAGE-BASED MALWARE DETECTION SYSTEM USING DEEP LEARNING
title_full VISUAL IMAGE-BASED MALWARE DETECTION SYSTEM USING DEEP LEARNING
title_fullStr VISUAL IMAGE-BASED MALWARE DETECTION SYSTEM USING DEEP LEARNING
title_full_unstemmed VISUAL IMAGE-BASED MALWARE DETECTION SYSTEM USING DEEP LEARNING
title_sort visual image-based malware detection system using deep learning
url https://digilib.itb.ac.id/gdl/view/79488
_version_ 1822996303672508416