Multiple Web Browsers Digest Authentication HTTP Response Splitting
Publish date: February 04, 2011
Severity: MEDIUM
CVE Identifier: CVE-2007-2292
Advisory Date: FEB 04, 2011
DESCRIPTION
CRLF injection vulnerability in the Digest Authentication support for Mozilla Firefox before 2.0.0.8 and SeaMonkey before 1.1.5 allows remote attackers to conduct HTTP request splitting attacks via LF (%0a) bytes in the username attribute.
TREND MICRO PROTECTION INFORMATION
Trend Micro Deep Security shields networks through Deep Packet Inspection (DPI) rules. Trend Micro customers using OfficeScan with Intrusion Defense Firewall (IDF) plugin are also protected from attacks using these vulnerabilities. Please refer to the filter number and filter name when applying appropriate DPI and/or IDF rules.
AFFECTED SOFTWARE AND VERSION
- Microsoft Internet Explorer 7.0.5730.11
- Mozilla Firefox 2.0.0.8
- Mozilla SeaMonkey 1.1.5
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