Literature DB >> 33816996

Data augmentation based malware detection using convolutional neural networks.

Ferhat Ozgur Catak1, Javed Ahmed2, Kevser Sahinbas3, Zahid Hussain Khand4.   

Abstract

Due to advancements in malware competencies, cyber-attacks have been broadly observed in the digital world. Cyber-attacks can hit an organization hard by causing several damages such as data breach, financial loss, and reputation loss. Some of the most prominent examples of ransomware attacks in history are WannaCry and Petya, which impacted companies' finances throughout the globe. Both WannaCry and Petya caused operational processes inoperable by targeting critical infrastructure. It is quite impossible for anti-virus applications using traditional signature-based methods to detect this type of malware because they have different characteristics on each contaminated computer. The most important feature of this type of malware is that they change their contents using their mutation engines to create another hash representation of the executable file as they propagate from one computer to another. To overcome this method that attackers use to camouflage malware, we have created three-channel image files of malicious software. Attackers make different variants of the same software because they modify the contents of the malware. In the solution to this problem, we created variants of the images by applying data augmentation methods. This article aims to provide an image augmentation enhanced deep convolutional neural network (CNN) models for detecting malware families in a metamorphic malware environment. The main contributions of the article consist of three components, including image generation from malware samples, image augmentation, and the last one is classifying the malware families by using a CNN model. In the first component, the collected malware samples are converted into binary file to 3-channel images using the windowing technique. The second component of the system create the augmented version of the images, and the last part builds a classification model. This study uses five different deep CNN model for malware family detection. The results obtained by the classifier demonstrate accuracy up to 98%, which is quite satisfactory.
© 2021 Catak et al.

Entities:  

Keywords:  Convolutional neural networks; Cybersecurity; Image augmentation; Malware analysis

Year:  2021        PMID: 33816996      PMCID: PMC7924722          DOI: 10.7717/peerj-cs.346

Source DB:  PubMed          Journal:  PeerJ Comput Sci        ISSN: 2376-5992


  1 in total

1.  Using additive noise in back-propagation training.

Authors:  L Holmstrom; P Koistinen
Journal:  IEEE Trans Neural Netw       Date:  1992
  1 in total

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