Interactive Search or Sequential Browsing? A Detailed Analysis of the Video Browser Showdown 2018

Author:

Lokoč Jakub1ORCID,Kovalčík Gregor1,Münzer Bernd2,Schöffmann Klaus2,Bailer Werner3,Gasser Ralph4,Vrochidis Stefanos5,Nguyen Phuong Anh6,Rujikietgumjorn Sitapa7,Barthel Kai Uwe8

Affiliation:

1. Charles University, Prague, Czech Republic

2. Klagenfurt University, Austria

3. JOANNEUM RESEARCH, Steyrergasse, Graz, Austria

4. University of Basel, Basel, Switzerland

5. Centre for Research and Technology Hellas, Thessaloniki, Greece

6. City University of Hong Kong, Tatchee Ave, Kowloon Tong, Hong Kong

7. National Electronics and Computer Technology Center, Thailand

8. HTW Berlin, Visual Computing Group, Berlin, Germany

Abstract

This work summarizes the findings of the 7th iteration of the Video Browser Showdown (VBS) competition organized as a workshop at the 24th International Conference on Multimedia Modeling in Bangkok. The competition focuses on video retrieval scenarios in which the searched scenes were either previously observed or described by another person (i.e., an example shot is not available). During the event, nine teams competed with their video retrieval tools in providing access to a shared video collection with 600 hours of video content. Evaluation objectives, rules, scoring, tasks, and all participating tools are described in the article. In addition, we provide some insights into how the different teams interacted with their video browsers, which was made possible by a novel interaction logging mechanism introduced for this iteration of the VBS. The results collected at the VBS evaluation server confirm that searching for one particular scene in the collection when given a limited time is still a challenging task for many of the approaches that were showcased during the event. Given only a short textual description, finding the correct scene is even harder. In ad hoc search with multiple relevant scenes, the tools were mostly able to find at least one scene, whereas recall was the issue for many teams. The logs also reveal that even though recent exciting advances in machine learning narrow the classical semantic gap problem, user-centric interfaces are still required to mediate access to specific content. Finally, open challenges and lessons learned are presented for future VBS events.

Funder

Swiss National Science Foundation

European Regional Development Fund and the Carinthian Economic Promotion Fund

Universität Klagenfurt and Lakeside Labs GmbH, Klagenfurt, Austria

Council of the Hong Kong Special Administrative Region, China

Czech Science Foundation

Horizon 2020 Research and Innovation Programme V4Design

CHIST-ERA project IMOTION

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture

Reference49 articles.

1. NearPy. Home Page. Retrieved March 30 2018 from https://github.com/pixelogik/NearPy. NearPy. Home Page. Retrieved March 30 2018 from https://github.com/pixelogik/NearPy.

2. Searching and annotating 100M Images with YFCC100M-HNfc6 and MI-File

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