Multi-camera detection and tracking for individual broiler monitoring

  • Thorsten Cardoen
  • , Patricia Soster de Carvalho
  • , Gunther Antonissen
  • , Frank A. M. Tuyttens
  • , Sam Leroux
  • , Pieter Simoens

Onderzoeksoutput: Bijdrage aan tijdschriftA1: Web of Science-artikelpeer review

Uittreksel

Welfare concerns in poultry farming have driven the need for advanced monitoring solutions to study broiler activity and health. However, existing research predominantly relies on single-camera setups, which are prone to occlusions from equipment such as feeders and lighting, limiting their effectiveness. To address this, we propose a multi-camera setup that enables comprehensive broiler localization and tracking from a top-down view of the pen. To support this approach, we introduce MVBroTrack,1 an open-source dataset containing realworld data with annotations for various subtasks critical to broiler studies. We demonstrate robust performance of our multi-view detection pipeline throughout the six-week broiler lifespan despite significant changes in visual appearance. Additionally, we present a novel unsupervised tracking method that surpasses the traditional tracking by detection paradigm, improving the IDF1 score by 3 our multi-camera pipeline facilitates exhaustive studies of broiler behavior and welfare, paving the way for significant advancements in poultry research and farming practices.
Oorspronkelijke taalEngels
Artikel nummer110435
TijdschriftComputers and Electronics in Agriculture
Volume237
ExemplaarnummerA
ISSN0168-1699
DOI's
PublicatiestatusGepubliceerd - 1-okt.-2025

Trefwoorden

  • Broiler welfare monitoring
  • Multi-camera detection
  • Object tracking
  • Sensor fusion

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