ABSTRACT
Conventional online video players do not make the inner structure of the video apparent, making it hard to jump straight to the interesting parts. Our LikeLines system provides its users with a navigable heat map of interesting regions for the videos they are watching. Its novelty lies in its combination of content analysis and both explicit and implicit user interactions. The system can be readily used and deployed to collect large amounts of interaction data needed for in-depth research on timecode-level feedback.
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Index Terms
- LikeLines: collecting timecode-level feedback for web videos through user interactions
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