CVAILGSep 21, 2023

Survey of Action Recognition, Spotting and Spatio-Temporal Localization in Soccer -- Current Trends and Research Perspectives

arXiv:2309.12067v112 citationsh-index: 5
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive overview for researchers in computer vision and sports analytics, but is incremental as it synthesizes existing work without introducing new methods.

This survey reviews current methods for action recognition, spotting, and spatio-temporal localization in soccer, focusing on multimodal approaches that integrate video and audio data to address the complexity of the game.

Action scene understanding in soccer is a challenging task due to the complex and dynamic nature of the game, as well as the interactions between players. This article provides a comprehensive overview of this task divided into action recognition, spotting, and spatio-temporal action localization, with a particular emphasis on the modalities used and multimodal methods. We explore the publicly available data sources and metrics used to evaluate models' performance. The article reviews recent state-of-the-art methods that leverage deep learning techniques and traditional methods. We focus on multimodal methods, which integrate information from multiple sources, such as video and audio data, and also those that represent one source in various ways. The advantages and limitations of methods are discussed, along with their potential for improving the accuracy and robustness of models. Finally, the article highlights some of the open research questions and future directions in the field of soccer action recognition, including the potential for multimodal methods to advance this field. Overall, this survey provides a valuable resource for researchers interested in the field of action scene understanding in soccer.

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