Malware Classification using Deep Convolutional Neural Networks

被引:0
|
作者
Kornish, David [1 ]
Geary, Justin [1 ]
Sansing, Victor [1 ]
Ezekiel, Soundararajan [1 ]
Pearlstein, Larry [2 ]
Njilla, Laurent [3 ]
机构
[1] Indiana Univ Penn, Indiana, PA 15705 USA
[2] Coll New Jersey, Ewing Township, NJ USA
[3] Air Force Res Lab, Rome, NY USA
关键词
Convolutional Neural Network; Support Vector Machine; Classifier; Malware; classification; malware images;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In recent years, deep convolution neural networks (DCNNs) have won many contests in machine learning, object detection, and pattern recognition. Furthermore, deep learning techniques achieved exceptional performance in image classification, reaching accuracy levels beyond human capability. Malware variants from similar categories often contain similarities due to code reuse. Converting malware samples into images can cause these patterns to manifest as image features, which can be exploited for DCNN classification. Techniques for converting malware binaries into images for visualization and classification have been reported in the literature, and while these methods do reach a high level of classification accuracy on training datasets, they tend to be vulnerable to overfitting and perform poorly on previously unseen samples. In this paper, we explore and document a variety of techniques for representing malware binaries as images with the goal of discovering a format best suited for deep learning. We implement a database for malware binaries from several families, stored in hexadecimal format. These malware samples are converted into images using various approaches and are used to train a neural network to recognize visual patterns in the input and classify malware based on the feature vectors. Each image type is assessed using a variety of learning models, such as transfer learning with existing DCNN architectures and feature extraction for support vector machine classifier training. Each technique is evaluated in terms of classification accuracy, result consistency, and time per trial. Our preliminary results indicate that improved image representation has the potential to enable more effective classification of new malware.
引用
收藏
页数:6
相关论文
共 50 条
  • [41] Detecting Malware Using Deep Neural Networks
    T. D. Ovasapyan
    M. A. Volkovskii
    A. S. Makarov
    Automatic Control and Computer Sciences, 2024, 58 (8) : 1147 - 1155
  • [42] Race Classification from Face using Deep Convolutional Neural Networks
    Wu, Xulei
    Yuan, Peijiang
    Wang, Tianmiao
    Gao, Doudou
    Cai, Ying
    2018 3RD IEEE INTERNATIONAL CONFERENCE ON ADVANCED ROBOTICS AND MECHATRONICS (IEEE ICARM), 2018, : 1 - 6
  • [43] Classification of vehicle types using fused deep convolutional neural networks
    Qian, Zichen
    Zhao, Chihang
    Zhang, Bailing
    Lin, Shengmei
    Hua, Liru
    Li, Hao
    Ma, Xiaogang
    Ma, Teng
    Wang, Xinliang
    JOURNAL OF INTELLIGENT & FUZZY SYSTEMS, 2022, 42 (06) : 5125 - 5137
  • [44] Classification of Pediatric Snoring Episodes Using Deep Convolutional Neural Networks
    Civaner, Ozan Firat
    Kamasak, Mustafa
    2018 26TH SIGNAL PROCESSING AND COMMUNICATIONS APPLICATIONS CONFERENCE (SIU), 2018,
  • [45] Diagnostic Classification of Cystoscopic Images Using Deep Convolutional Neural Networks
    Eminaga, Okyaz
    Eminaga, Nurettin
    Semjonow, Axel
    Breil, Bernhard
    JCO CLINICAL CANCER INFORMATICS, 2018, 2 : 1 - 8
  • [46] Intelligent solid waste classification using deep convolutional neural networks
    A. Altikat
    A. Gulbe
    S. Altikat
    International Journal of Environmental Science and Technology, 2022, 19 : 1285 - 1292
  • [47] Automated Truck Taxonomy Classification Using Deep Convolutional Neural Networks
    Almutairi, Abdullah
    He, Pan
    Rangarajan, Anand
    Ranka, Sanjay
    INTERNATIONAL JOURNAL OF INTELLIGENT TRANSPORTATION SYSTEMS RESEARCH, 2022, 20 (02) : 483 - 494
  • [48] Detection and Classification of Human Stool Using Deep Convolutional Neural Networks
    Choy, Yin Pui
    Hu, Guoqing
    Chen, Jia
    IEEE ACCESS, 2021, 9 : 160485 - 160496
  • [49] Polarimetric SAR Image Classification Using Deep Convolutional Neural Networks
    Zhou, Yu
    Wang, Haipeng
    Xu, Feng
    Jin, Ya-Qiu
    IEEE GEOSCIENCE AND REMOTE SENSING LETTERS, 2016, 13 (12) : 1935 - 1939
  • [50] Cell dynamic morphology classification using deep convolutional neural networks
    Li, Heng
    Pang, Fengqian
    Shi, Yonggang
    Liu, Zhiwen
    CYTOMETRY PART A, 2018, 93A (06) : 628 - 638