mlt
Video editor toolkit
A multimedia framework designed for video editing, providing tools and libraries for audio and video processing.
MLT Multimedia Framework
2k stars
75 watching
324 forks
Language: C
last commit: 2 months ago
Linked from 1 awesome list
audioaudio-processingcc-plus-plusffmpegframeworkfrei0rladspamultimediaopenglqtsdl2videovideo-processing
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