Research Paper | Computer Science & Engineering | India | Volume 4 Issue 3, March 2015
Detecting the Rootkit through Dynamic Analysis
D. Suganya Gandhi, S. Suresh Kumar
Abstract: Network security provides a security for all the programs or files or system. Some attackers attack a programs or files or passwords or other personal details of the user. Like the same way Rootkit is one of the malicious file or a software which attacks a network security and acts an administrator in an absence of the user knowledge. Rootkit virus is stealthy in nature and is installed in the system through a file or a driver or coding. It attacks the system through the kernel-level in the real time. Files are hided through the rootkit in the absence of the user knowledge. They can monitor the other users activity when the botnet is installed in the other system. Rootkit allows the attacker through the backdoor. So that attacker can steal the users personal details. Task manager, service and the registry are got destroyed or made changes. The attacker can make any changes at any time. Finally the malicious file and authorized files are distinguished and their accuracy is performed.
Keywords: Malicious, Rootkit, Static analysis, Kernel-level
Edition: Volume 4 Issue 3, March 2015,
Pages: 1864 - 1868
How to Cite this Article?
D. Suganya Gandhi, S. Suresh Kumar, "Detecting the Rootkit through Dynamic Analysis", International Journal of Science and Research (IJSR), https://www.ijsr.net/get_abstract.php?paper_id=19031505, Volume 4 Issue 3, March 2015, 1864 - 1868
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