Deep Learning for Sports Video Event Detection: Tasks, Datasets, Methods, and Challenges
Hao Xu, Arbind Agrahari Baniya, Sam Well, Mohamed Reda Bouadjenek, Richard Dazeley, Sunil Aryal

TL;DR
This survey comprehensively reviews deep learning methods for sports video event detection, clarifies task distinctions, introduces a taxonomy of approaches, and critically assesses datasets and evaluation protocols, highlighting challenges and future directions.
Contribution
It distinctly delineates TAL, AS, and PES tasks, introduces a structured taxonomy of methods, and evaluates datasets and metrics specific to sports event detection.
Findings
Clarified differences between TAL, AS, and PES tasks.
Identified limitations in current datasets and evaluation metrics.
Provided a comprehensive taxonomy of state-of-the-art approaches.
Abstract
Video event detection has become a cornerstone of modern sports analytics, powering automated performance evaluation, content generation, and tactical decision-making. Recent advances in deep learning have driven progress in related tasks such as Temporal Action Localization (TAL), which detects extended action segments; Action Spotting (AS), which identifies a representative timestamp; and Precise Event Spotting (PES), which pinpoints the exact frame of an event. Although closely connected, their subtle differences often blur the boundaries between them, leading to confusion in both research and practical applications. Furthermore, prior surveys either address generic video event detection or broader sports video tasks, but largely overlook the unique temporal granularity and domain-specific challenges of event spotting. In addition, most existing sports video surveys focus on…
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Taxonomy
TopicsVideo Analysis and Summarization · Human Pose and Action Recognition · Anomaly Detection Techniques and Applications
