voipshark
VoIP Traffic Analyser
Analyzes and decrypts VoIP traffic for security and forensic purposes
VoIPShark is a open source VoIP Analysis Platform which will allow people to analyze live or stored VoIP traffic, easily decrypt encrypted SRTP stream, perform macro analysis, generate summary specific to VoIP traffic/nodes and export calls/SMS/DTMF in popular user friendly file formats.
79 stars
3 watching
19 forks
Language: Lua
last commit: about 5 years ago
Linked from 1 awesome list
Related projects:
Repository | Description | Stars |
---|---|---|
| A collection of tools and modules for testing VoIP networks and detecting vulnerabilities | 405 |
| A packet capture and monitoring framework for VoIP/RTC applications | 1,674 |
| A tool that analyzes web application security by parsing Burp Suite logs and generating reports. | 120 |
| A suite of tools for auditing and testing SIP-based VoIP systems. | 903 |
| A tool to detect and prevent fraud in VoIP networks by monitoring phone numbers and IP addresses | 176 |
| A tool for performing security audits on VoIP services by scanning networks and hosts for vulnerabilities. | 108 |
| An analysis repository providing scripts, signatures, and IOCs for detecting and analyzing malware. | 110 |
| Generates an OpenAPI dissector to analyze API traffic | 19 |
| An SIP-based tool used for network auditing and penetration testing | 394 |
| Analyzes web-based network traffic to detect malicious command and control servers using Squid proxy server and Spamhaus | 78 |
| A tool that simplifies the analysis of SS7 signaling pcap files by flattening SCTP chunks and grouping packets by transactions. | 27 |
| A collection of tools and scripts for penetration testing and vulnerability assessment of web applications. | 2 |
| A tool that assists in identifying security vulnerabilities by generating and analyzing HTTP requests | 147 |
| A command-line tool for crafting and sending SIP requests for testing purposes | 301 |
| An advanced spam analysis tool that processes email streams in real-time using Apache Storm and various machine learning models. | 294 |