Biomechanical-phase based Temporal Segmentation in Sports Videos: a Demonstration on Javelin-Throw
Source
2025 IEEE International Workshop on Sport Technology and Research STAR 2025
Date Issued
2025-01-01
Author(s)
Abstract
Precise analysis of athletic motion is central to sports analytics, particularly in disciplines where nuanced biomechanical phases directly impact performance outcomes. Traditional analytics techniques rely on manual annotation or laboratory-based instrumentation-which are time-consuming, costly, and lack scalability. Automatic extraction of relevant kinetic variables requires a robust and contextually-appropriate temporal segmentation. Considering the specific case of elite javelin-throw, we present a novel unsupervised framework for such a contextually-aware segmentation which applies the structured optimal transport (SOT) concept to augment the well-known Attention-based Spatio-Temporal Graph Convolutional Network (ASTGCN). This enables the identification of motion phase transitions without requiring expensive manual labeling. Extensive experiments demonstrate that our approach outperforms state-of-the-art unsupervised methods, achieving 71.02% mean average precision (mAP) and 74.61% F1-score on test datasubstantially higher than competing baselines. We also release a new dataset of 211 manually-annotated professional javelin-throw videos with frame-level annotations, covering key biomechanical phases: approach steps, drive, throw, and recovery.
Keywords
Graph Convolution
Optimal Transport Theory
Representation Learning
Skeleton-based Action Localization
Sports Analytics
