Vitrivr-Explore: Guided Multimedia Collection Exploration For Ad-Hoc Video

SIMILARITY SEARCH AND APPLICATIONS, SISAP 2020(2020)

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摘要
vitrivr is an open-source system for indexing and retrieving multimedia data based on its content and it has been a fixture at the Video Browser Showdown (VBS) in the past years. While vitrivr has proven to be competitive in content-based retrieval due to the many different query modes it supports, its functionality is rather limited when it comes to exploring a collection or searching result sets based on content. In this paper, we present vitrivr-explore, an extension to the vitrivr stack that allows to explore multimedia collections using relevance feedback. For this, our implementation integrates into the existing features of vit-rivr and exploits self-organizing maps. Users initialize the exploration by either starting with a query or just picking examples from a collection while browsing. Exploration can be based on a mixture of semantic and visual features. We describe our architecture and implementation and present first results of the effectiveness of vitrivr-explore in a VBS-like evaluation. These results show that vitrivr-explore is competitive for Ad-hoc Video Search (AVS) tasks, even without user initialization.
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关键词
Self-organizing maps, Relevance feedback, Ad-hoc video search
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