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The V3C1 Dataset: Advancing the State of the Art in Video Retrieval
JournalArticle (Originalarbeit in einer wissenschaftlichen Zeitschrift)
 
ID 4523921
Author(s) Rossetto, Luca; Berns, Fabian; Schöffmann, Klaus; Awad, George; Beecks, Christian
Author(s) at UniBasel Rossetto, Luca
Year 2019
Title The V3C1 Dataset: Advancing the State of the Art in Video Retrieval
Journal ACM SIGMM Records
Volume 11
Number 2
Abstract Standardized datasets are of vital importance in multimedia research, as they form the basis for reproducible experiments and evaluations. In the area of video retrieval, widely used datasets such as the IACC, which has formed the basis for the TRECVID Ad-Hoc Video Search Task and other retrieval-related challenges, have started to show their age. For example, IACC is no longer representative of video content as it is found in the wild. This is illustrated by the figures below, showing the distribution of video age and duration across various datasets in comparison with a sample drawn from Vimeo and Youtube.
Publisher ACM
ISSN/ISBN 1947-4598
URL https://sigmm.hosting.acm.org/2019/07/06/the-v3c1-dataset-advancing-the-state-of-the-art-in-video-retrieval/
edoc-URL https://edoc.unibas.ch/73829/
Full Text on edoc No
 
   

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