Publication | Closed Access
SOMHunter: Lightweight Video Search System with SOM-Guided Relevance Feedback
22
Citations
10
References
2020
Year
Unknown Venue
EngineeringMachine LearningVideo SummarizationVideo Browser ShowdownImage SearchVideo RetrievalText MiningNatural Language ProcessingImage AnalysisInformation RetrievalData SciencePattern RecognitionRelevance FeedbackVideo Content AnalysisVideo Search SystemComputer ScienceSom-guided Relevance FeedbackComputer VisionVbs 2020ArtsMultimedia Search
In the last decade, the Video Browser Showdown (VBS) became a comparative platform for various interactive video search tools competing in selected video retrieval tasks. However, the participation of new teams with an own, novel tool is prohibitively time-demanding because of the large number and complexity of components required for constructing a video search system from scratch. To partially alleviate this difficulty, we provide an open-source version of the lightweight known-item search system SOMHunter that competed successfully at VBS 2020. The system combines several features for text-based search initialization and browsing of large result sets; in particular a variant of W2VV++ model for text search, temporal queries for targeting sequences of frames, several types of displays including the eponymous self-organizing map view, and a feedback-based approach for maintaining the relevance scores inspired by PICHunter. The minimalistic, easily extensible implementation of SOMHunter should serve as a solid basis for constructing new search systems, thus facilitating easier exploration of new video retrieval ideas.
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