Sports analytics review: Artificial intelligence applications, emerging technologies, and algorithmic perspective

Author:

Ghosh Indrajeet12ORCID,Ramasamy Ramamurthy Sreenivasan3,Chakma Avijoy1,Roy Nirmalya12

Affiliation:

1. Mobile Pervasive & Sensor Computing Lab, Department of Information Systems University of Maryland Baltimore County (UMBC) Baltimore Maryland 21250 USA

2. Center for Real‐time Distributed Sensing and Autonomy (CARDS) Baltimore Maryland 21250 USA

3. Department of Computer Science Bowie State University Bowie Maryland 20715 USA

Abstract

AbstractThe rapid and impromptu interest in the coupling of machine learning (ML) algorithms with wearable and contactless sensors aimed at tackling real‐world problems warrants a pedagogical study to understand all the aspects of this research direction. Considering this aspect, this survey aims to review the state‐of‐the‐art literature on ML algorithms, methodologies, and hypotheses adopted to solve the research problems and challenges in the domain of sports. First, we categorize this study into three main research fields: sensors, computer vision, and wireless and mobile‐based applications. Then, for each of these fields, we thoroughly analyze the systems that are deployable for real‐time sports analytics. Next, we meticulously discuss the learning algorithms (e.g., statistical learning, deep learning, reinforcement learning) that power those deployable systems while also comparing and contrasting the benefits of those learning methodologies. Finally, we highlight the possible future open‐research opportunities and emerging technologies that could contribute to the domain of sports analytics.This article is categorized under: Technologies > Machine Learning Technologies > Artificial Intelligence Technologies > Internet of Things

Funder

National Science Foundation

U.S. Army

Publisher

Wiley

Subject

General Computer Science

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