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  1. Home
  2. IIT Gandhinagar
  3. Electrical Engineering
  4. EE Publications
  5. HistoTrack++: A Vision-Based System for Temporal Bout Segmentation, Multi-Target Tracking and Kinematic Analysis in Overhead Combat Sports Videos
 
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HistoTrack++: A Vision-Based System for Temporal Bout Segmentation, Multi-Target Tracking and Kinematic Analysis in Overhead Combat Sports Videos

Source
Journal of Signal Processing Systems
ISSN
19398018
Date Issued
2026-06-01
Author(s)
Shanmugasundaramurthi, Karthikeyan Angalamman
Baghel, Vipul
Kirupakaran, Anish Monsley
Warburton, John
Srinivasan, Ramji
Hegde, Ravi Sadananda
Srinivasan, Babji
DOI
10.1007/s11265-025-01972-9
Volume
98
Issue
1
Abstract
Analyzing raw, untrimmed training videos in combat sports is challenging due to occlusion, motion clutter, and identity ambiguity. This paper presents HistoTrack++, an end-to-end framework for overhead boxing footage that addresses these challenges via automated bout segmentation, robust identity tracking, and interpretable movement analytics. The pipeline begins with a segmentation module combining a fine-tuned YOLOv8 detector with domain-driven spatial-temporal heuristics, achieving 97.6% segmentation accuracy on 40 h of sparring data from 75 athletes. For tracking, we introduce HistoTrack, a histogram-guided, identity-preserving tracker that maintains 0.95 MOTA at 23 FPS, even under heavy occlusion. Four coach-informed kinematic metrics—hotspot density, directional histograms, engage/disengage dynamics, and zone usage—provide actionable insights aligned with athlete development. Extensive evaluation against 21 existing models demonstrates that HistoTrack + + outperforms prior methods in accuracy, identity consistency, and interpretability in challenging overhead views. Although validated on boxing, the modular segmentation–tracking–analytics framework is domain-agnostic and transferable to other multi-object overhead video scenarios, including judo, wrestling, and team-sport training. With ~ 10 M parameters and real-time performance, the framework is deployable both locally and on scalable server infrastructures. HistoTrack + + thus offers a practical, scalable approach for automated video analytics in combat sports, with broader implications for tactical modeling, longitudinal performance assessment, and real-time sports video understanding.
URI
http://repository.iitgn.ac.in/handle/IITG2025/33602
Keywords
Combat sports analytics | Kinematic analysis | Multi-Object tracking | Overhead vision systems | Video segmentation
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