xndien2004/LLM_Powered_Video_Search
[SOICT 2024] LLM-Powered Video Search: A Comprehensive Multimedia Retrieval System
This system helps professionals efficiently locate specific moments within large video archives. You provide text descriptions, images, or metadata as queries, and it returns relevant video segments or keyframes. This is ideal for content librarians, media researchers, or anyone managing extensive video collections who needs to quickly find exact content without watching hours of footage.
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Use this if you need to quickly find specific content within vast video libraries using natural language, images, or detailed tags.
Not ideal if your video collection is small, you only need basic keyword search, or you lack the technical expertise to set up and configure a web application.
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Aug 16, 2025
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