CVAILGMMMay 2, 2022

A Multi-stage deep architecture for summary generation of soccer videos

arXiv:2205.00694v17 citationsh-index: 22
Originality Incremental advance
AI Analysis

This work addresses the need for automated, generalizable video summarization in the sports industry, particularly for soccer, but it appears incremental as it builds on existing multimodal approaches.

The authors tackled the problem of generating summaries for soccer match videos by proposing a method that uses both audio and event metadata, achieving the ability to detect actions, select key ones, and produce multiple candidate summaries with relevant variability.

Video content is present in an ever-increasing number of fields, both scientific and commercial. Sports, particularly soccer, is one of the industries that has invested the most in the field of video analytics, due to the massive popularity of the game and the emergence of new markets. Previous state-of-the-art methods on soccer matches video summarization rely on handcrafted heuristics to generate summaries which are poorly generalizable, but these works have yet proven that multiple modalities help detect the best actions of the game. On the other hand, machine learning models with higher generalization potential have entered the field of summarization of general-purpose videos, offering several deep learning approaches. However, most of them exploit content specificities that are not appropriate for sport whole-match videos. Although video content has been for many years the main source for automatizing knowledge extraction in soccer, the data that records all the events happening on the field has become lately very important in sports analytics, since this event data provides richer context information and requires less processing. We propose a method to generate the summary of a soccer match exploiting both the audio and the event metadata. The results show that our method can detect the actions of the match, identify which of these actions should belong to the summary and then propose multiple candidate summaries which are similar enough but with relevant variability to provide different options to the final editor. Furthermore, we show the generalization capability of our work since it can transfer knowledge between datasets from different broadcasting companies, different competitions, acquired in different conditions, and corresponding to summaries of different lengths

Foundations

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