National Conference on Computer Science and Information Technology |
Foundation of Computer Science USA |
NCCSIT2017 - Number 1 |
September 2018 |
Authors: Aziz Makandar, Anita Patrot |
5d4d5d48-9691-4de9-8023-f4697745034e |
Aziz Makandar, Anita Patrot . A Statistical Approach to Malware Class Recognition. National Conference on Computer Science and Information Technology. NCCSIT2017, 1 (September 2018), 16-19.
In this paper, we describe the proposed work on texture pattern classification using different Wavelet family, i. e. wavelet statistical features such as first order statistical feature vector. The WSF vector is formed to discriminate the various texture patterns of the Malware classes. The standard databases are used for experimental analysis of malware as a grayscale image. The database consists of 24 malware which belong to different variants with types of malware classes. The feature vector is further analyzed with malware classes the image to be classified based on the similarities in the image patterns. The experimental results shown that the efficiency of the wavelet based statistical features gives better classification results.