Biblio

Filters: Author is Lipford, H. R.  [Clear All Filters]
2017-12-20
Mohammadi, M., Chu, B., Lipford, H. R..  2017.  Detecting Cross-Site Scripting Vulnerabilities through Automated Unit Testing. 2017 IEEE International Conference on Software Quality, Reliability and Security (QRS). :364–373.

The best practice to prevent Cross Site Scripting (XSS) attacks is to apply encoders to sanitize untrusted data. To balance security and functionality, encoders should be applied to match the web page context, such as HTML body, JavaScript, and style sheets. A common programming error is the use of a wrong encoder to sanitize untrusted data, leaving the application vulnerable. We present a security unit testing approach to detect XSS vulnerabilities caused by improper encoding of untrusted data. Unit tests for the XSS vulnerability are automatically constructed out of each web page and then evaluated by a unit test execution framework. A grammar-based attack generator is used to automatically generate test inputs. We evaluate our approach on a large open source medical records application, demonstrating that we can detect many 0-day XSS vulnerabilities with very low false positives, and that the grammar-based attack generator has better test coverage than industry best practices.

2017-11-27
Mohammadi, M., Chu, B., Lipford, H. R., Murphy-Hill, E..  2016.  Automatic Web Security Unit Testing: XSS Vulnerability Detection. 2016 IEEE/ACM 11th International Workshop in Automation of Software Test (AST). :78–84.

Integrating security testing into the workflow of software developers not only can save resources for separate security testing but also reduce the cost of fixing security vulnerabilities by detecting them early in the development cycle. We present an automatic testing approach to detect a common type of Cross Site Scripting (XSS) vulnerability caused by improper encoding of untrusted data. We automatically extract encoding functions used in a web application to sanitize untrusted inputs and then evaluate their effectiveness by automatically generating XSS attack strings. Our evaluations show that this technique can detect 0-day XSS vulnerabilities that cannot be found by static analysis tools. We will also show that our approach can efficiently cover a common type of XSS vulnerability. This approach can be generalized to test for input validation against other types injections such as command line injection.