학술논문

Deep Learning in Drebin: Android malware Image Texture Median Filter Analysis and Detection
Document Type
Article
Source
KSII Transactions on Internet and Information Systems (TIIS). Jul 30, 2019 13(7):3654
Subject
malware
Image Texture Median Filter
Malware Activity Embedding in Vector Space
Language
English
ISSN
1976-7277
Abstract
This paper proposes an Image Texture Median Filter (ITMF) to analyze and detect Android malware on Drebin datasetsMedian Filter (MF) to reflect the similarity of the malware binary file block. At the same time, using the MAEVS (Malware Activity Embedding in Vector Space) to reflect the potential dynamic activity of malware. In order to ensure the improvement of the classification accuracy, the above-mentioned features(ITMF feature and MAEVS feature)are studied to train Restricted Boltzmann Machine (RBM) and Back Propagation (BP). The experimental results show that the model has an average accuracy rate of 95.43% 1. We design a model of “ITMF” combined with Image Processing of with few false alarms. to Android malicious code, which is significantly higher than 95.2% of without ITMF, 93.8% of shallow machine learning model SVM, 94.8% of KNN, 94.6% of ANN.