Dissertação
Aplicando a transformada wavelet bidimensional na detecção de ataques web
Fecha
2012-02-27Registro en:
MOZZAQUATRO, Bruno Augusti. Applying two-dimensional wavelet transform for the detection of web attacks. 2012. 88 f. Dissertação (Mestrado em Ciência da Computação) - Universidade Federal de Santa Maria, Santa Maria, 2012.
Autor
Mozzaquatro, Bruno Augusti
Institución
Resumen
With the increase web traffic of comes various threats to the security of web applications.
The threats arise inherent vulnerabilities of web systems, where malicious code or content injection
are the most exploited vulnerabilities in web attacks. The injection vulnerability allows
the attacker to insert information or a program in improper places, causing damage to customers
and organizations. Its property is to change the character frequency distribution of some
requests within a set of web requests. Anomaly-based intrusion detection systems have been
used to break these types of attacks, due to the diversity and complexity found in web attacks.
In this context, this paper proposes a new anomaly based detection algorithm that apply the
two-dimensional wavelet transform for the detection of web attacks. The algorithm eliminates
the need for a training phase (which asks for reliable data) and searches for character frequency
anomalies in a set of web requests, through the analysis in multiple directions and resolutions.
The experiment results demonstrate the feasibility of our technique for detecting web attacks.
After some adjustments on different parameters, the algorithm has obtained detection rates up
to 100%, eliminating the occurrence of false positives.