Multi-Person Tracking By Multi-Scale Detection in Basketball Scenarios

Adria Arbués-Sanguesa, Gloria Haro, Coloma Ballester

Research output: Contribution to conferencePaperpeer-review

Abstract

Tracking data is a powerful tool for basketball teams in order to extract advanced semantic information and statistics that might lead to a performance boost. However, multi-person tracking is a challenging task to solve in single-camera video sequences, given the frequent occlusions and cluttering that occur in a restricted scenario. In this paper, a novel multi-scale detection method is presented, which is later used to extract geometric and content features, resulting in a multi-person video tracking system. Having built a dataset from scratch together with its ground truth (more than 10k bounding boxes), standard metrics are evaluated, obtaining notable results both in terms of detection (F1-score) and tracking (MOTA). The presented system could be used as a source of data gathering in order to extract useful statistics and semantic analyses a posteriori.
Original languageEnglish
DOIs
Publication statusPublished - 1 Jan 2019
Externally publishedYes

Keywords

  • Tracking data
  • basketball teams
  • semantic information
  • statistics
  • multi-person tracking
  • single-camera video sequences
  • occlusions
  • cluttering
  • multi-scale detection
  • geometric features
  • content features
  • video tracking system
  • dataset
  • ground truth
  • bounding boxes
  • standard metrics
  • detection
  • F1-score
  • tracking
  • MOTA
  • data gathering
  • semantic analyses

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