TY - JOUR
T1 - Is the Reign of Interactive Search Eternal? Findings from the Video Browser Showdown 2020
AU - Lokoč, Jakub
AU - Veselý, Patrik
AU - Mejzlík, František
AU - Kovalčík, Gregor
AU - Souček, Tomáš
AU - Rossetto, Luca
AU - Schoeffmann, Klaus
AU - Bailer, Werner
AU - Gurrin, Cathal
AU - Sauter, Loris
AU - Song, Jaeyub
AU - Vrochidis, Stefanos
AU - Wu, Jiaxin
AU - Jónsson, Björn Thór
PY - 2021/8
Y1 - 2021/8
N2 - Comprehensive and fair performance evaluation of information retrieval systems represents an essential task for the current information age. Whereas Cranfield-based evaluations with benchmark datasets support development of retrieval models, significant evaluation efforts are required also for user-oriented systems that try to boost performance with an interactive search approach. This paper presents findings from the 9th Video Browser Showdown, a competition that focuses on a legitimate comparison of interactive search systems designed for challenging known-item search tasks over a large video collection. During previous installments of the competition, the interactive nature of participating systems was a key feature to satisfy known-item search needs and this paper continues to support this hypothesis. Despite the fact that top-performing systems integrate the most recent deep learning models into their retrieval process, interactive searching remains a necessary component of successful strategies for known-item search tasks. Alongside the description of competition settings, evaluated tasks, participating teams, and overall results, this paper presents a detailed analysis of query logs collected by the top three performing systems SOMHunter, VIRET, and vitrivr. The analysis provides a quantitative insight to the observed performance of the systems and constitutes a new baseline methodology for future events. The results reveal that the top two systems mostly relied on temporal queries before a correct frame was identified. An interaction log analysis complements the result log findings and points to the importance of result set and video browsing approaches. Finally, various outlooks are discussed in order to improve the Video Browser Showdown challenge in the future.
AB - Comprehensive and fair performance evaluation of information retrieval systems represents an essential task for the current information age. Whereas Cranfield-based evaluations with benchmark datasets support development of retrieval models, significant evaluation efforts are required also for user-oriented systems that try to boost performance with an interactive search approach. This paper presents findings from the 9th Video Browser Showdown, a competition that focuses on a legitimate comparison of interactive search systems designed for challenging known-item search tasks over a large video collection. During previous installments of the competition, the interactive nature of participating systems was a key feature to satisfy known-item search needs and this paper continues to support this hypothesis. Despite the fact that top-performing systems integrate the most recent deep learning models into their retrieval process, interactive searching remains a necessary component of successful strategies for known-item search tasks. Alongside the description of competition settings, evaluated tasks, participating teams, and overall results, this paper presents a detailed analysis of query logs collected by the top three performing systems SOMHunter, VIRET, and vitrivr. The analysis provides a quantitative insight to the observed performance of the systems and constitutes a new baseline methodology for future events. The results reveal that the top two systems mostly relied on temporal queries before a correct frame was identified. An interaction log analysis complements the result log findings and points to the importance of result set and video browsing approaches. Finally, various outlooks are discussed in order to improve the Video Browser Showdown challenge in the future.
KW - interactive video retrieval
KW - deep learning
KW - interactive search evaluation
KW - interactive video retrieval
KW - deep learning
KW - interactive search evaluation
U2 - 10.1145/3445031
DO - 10.1145/3445031
M3 - Journal article
SN - 1551-6857
VL - 17
SP - 91:1-91:26
JO - ACM Transactions on Multimedia Computing, Communications, and Applications
JF - ACM Transactions on Multimedia Computing, Communications, and Applications
IS - 3
M1 - 91
ER -