Information Need in Metaverse Recordings -- A Field Study
November 13, 2024 Β· Declared Dead Β· π Information research. An international electronic journal
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Authors
Patrick Steinert, Jan Mischkies, Stefan Wagenpfeil, Ingo Frommholz, Matthias L. Hemmje
arXiv ID
2411.09053
Category
cs.IR: Information Retrieval
Cross-listed
cs.MM
Citations
1
Venue
Information research. An international electronic journal
Last Checked
4 months ago
Abstract
Metaverse Recordings (MVRs) represent an emerging and underexplored media type within the field of Multimedia Information Retrieval (MMIR). This paper presents findings from a field study aimed at understanding the users information needs and search behaviors specific to MVR retrieval. By conducting and analyzing expert interviews, the study identifies application scenarios and highlights challenges in retrieving multimedia content from the metaverse. The results reveal existing application scenarios of MVRs and confirm the relevance of capturing time-series data from the graphical rendering process and related input-output devices, which are also highly relevant to user needs. Furthermore, the study provides a foundation for developing retrieval systems tailored to MVRs by defining use cases, user stereotypes, and specific requirements for MVR Retrieval systems. The findings contribute to a better understanding of information search behaviors in MVR Retrieval and pave the way for future research and system design in this field.
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