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Publication . Conference object . 2017

Query And Keyframe Representations For Ad-Hoc Video Search

Foteini Markatopoulou; Damianos Galanopoulos; Vasileios Mezaris; Ioannis Patras;
Open Access
Abstract

This paper presents a fully-automatic method that combines video concept detection and textual query analysis in order to solve the problem of ad-hoc video search. We present a set of NLP steps that cleverly analyse different parts of the query in order to convert it to related semantic concepts, we propose a new method for transforming concept-based keyframe and query representations into a common semantic embedding space, and we show that our proposed combination of concept-based representations with their corresponding semantic embeddings results to improved video search accuracy. Our experiments in the TRECVID AVS 2016 and the Video Search 2008 datasets show the effectiveness of the proposed method compared to other similar approaches.

Subjects by Vocabulary

Microsoft Academic Graph classification: Video tracking Space (commercial competition) Web search query Information retrieval Set (abstract data type) TRECVID Query expansion Computer science Concept search Embedding

Subjects

video concept detection, textual query analysis, Video search, Zero-shot learning, Visual analysis

Funded by
EC| InVID
Project
InVID
In Video Veritas – Verification of Social Media Video Content for the News Industry
  • Funder: European Commission (EC)
  • Project Code: 687786
  • Funding stream: H2020 | IA
Validated by funder
,
EC| MOVING
Project
MOVING
Training towards a society of data-savvy information professionals to enable open leadership innovation
  • Funder: European Commission (EC)
  • Project Code: 693092
  • Funding stream: H2020 | RIA
Validated by funder
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https://zenodo.org/record/8096...
Conference object
License: cc-by
Providers: UnpayWall
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