Biblio

Filters: Author is Xiaosong, Zhang  [Clear All Filters]
2018-08-06
Kumar, Rajesh, Xiaosong, Zhang, Khan, Riaz Ullah, Kumar, Jay, Ahad, Ijaz.  2018.  Effective and Explainable Detection of Android Malware Based on Machine Learning Algorithms. Proceedings of the 2018 International Conference on Computing and Artificial Intelligence. :35–40.
2019-02-08
Kumar, Rajesh, Xiaosong, Zhang, Khan, Riaz Ullah, Ahad, Ijaz, Kumar, Jay.  2018.  Malicious Code Detection Based on Image Processing Using Deep Learning. Proceedings of the 2018 International Conference on Computing and Artificial Intelligence. :81-85.

In this study, we have used the Image Similarity technique to detect the unknown or new type of malware using CNN ap- proach. CNN was investigated and tested with three types of datasets i.e. one from Vision Research Lab, which contains 9458 gray-scale images that have been extracted from the same number of malware samples that come from 25 differ- ent malware families, and second was benign dataset which contained 3000 different kinds of benign software. Benign dataset and dataset vision research lab were initially exe- cutable files which were converted in to binary code and then converted in to image files. We obtained a testing ac- curacy of 98% on Vision Research dataset.