Fully Automatic Camera for Personalized Highlight Generation in Sporting Events

Author:

Decorte Robbe1ORCID,De Bock Jelle1ORCID,Taelman Joachim1,Slembrouck Maarten1ORCID,Verstockt Steven1ORCID

Affiliation:

1. IDLab, Ghent University—imec, Technologiepark-Zwijnaarde 122, 9052 Ghent, Belgium

Abstract

Personally curated content in short-form video formats provides added value for participants and spectators but is often disregarded in lower-level events because it is too labor-intensive to create or is not recorded at all. Our smart sensor-driven tripod focuses on supplying a unified sensor and video solution to capture personalized highlights for participants in various sporting events with low computational and hardware costs. The relevant parts of the video for each participant are automatically determined by using the timestamps of his/her received sensor data. This is achieved through a customizable clipping mechanism that processes and optimizes both video and sensor data. The clipping mechanism is driven by sensing nearby signals of Adaptive Network Topology (ANT+) capable devices worn by the athletes that provide both locality information and identification. The device was deployed and tested in an amateur-level cycling race in which it provided clips with a detection rate of 92.9%. The associated sensor data were used to automatically extract peloton passages and report riders’ positions on the course, as well as which participants were grouped together. Insights derived from sensor signals can be processed and published in real time, and an upload optimization scheme is proposed that can provide video clips for each rider a maximum of 5 min after the passage if video upload is enabled.

Funder

UGent IOF

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference39 articles.

1. Giorgio, P. (2023, June 12). Fan Engagement: What’s Your Game Plan?. Available online: https://www2.deloitte.com/us/en/pages/consumer-business/articles/sports-loyalty-scoreboard.html.

2. Aronesty, M., Giorgio, P., John, P.S., Murali, R., and Freeman, K. (2023, June 12). Loyalty Scoreboard: Exploring Fan Engagement. Available online: https://www2.deloitte.com/content/dam/Deloitte/us/Documents/consumer-business/us-cb-redefining-home-field-advantage-final.pdf.

3. A Real-Time Bicycle Record System of Ground Conditions Based on Internet of Things;Zhao;IEEE Access,2017

4. Joel Shapiro (2023, November 16). Data Driven at 200 MPH: How Analytics Transforms Formula One Racing. Available online: https://www.forbes.com/sites/joelshapiro/2023/01/26/data-driven-at-200-mph-how-analytics-transforms-formula-one-racing/?sh=1d79e9b239db.

5. Wade, T. (2021). Tour de France 2022—The Technology behind the World’s Largest Connected Stadium, NTT Ltd.. Available online: https://hello.global.ntt/tourdefrance/-/media/ntt/tdf/2021/tour-de-france-whitepaper.pdf.

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