
I created the MMVSkim architecture, a lightweight ML system that automatically trims educational videos by detecting the most important moments using both audio and visual cues.
It generates accurate transcripts, scores each sentence for relevance, and removes filler sections, therefore making long lecture videos shorter while keeping the key learning content intact.
This helps educators save time on editing and deliver clearer, more focused video lessons.
Machine Learning • MSc. Thesis • Video Skimming • Video Processing
Abstract