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Updated: Apr 11, 2026

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Machine learning applications for postharvest poultry processing: a review.

Zhen Jia1, Boce Zhang2, Lucas Harper3

  • 1Department of Poultry Science, Auburn University, Auburn, AL, USA.

Critical Reviews in Food Science and Nutrition
|April 9, 2026
PubMed
Summary

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This summary is machine-generated.

Machine learning (ML) enhances poultry processing efficiency and safety. This review explores ML applications in quality control, safety monitoring, and foreign material detection, paving the way for a smarter food supply chain.

Area of Science:

  • Food Science and Technology
  • Artificial Intelligence in Agriculture
  • Poultry Processing Engineering

Background:

  • Global poultry production is increasing, necessitating efficient and safe processing methods.
  • Ensuring product quality and regulatory compliance is crucial for consumer trust and market access.
  • Traditional processing methods face challenges in meeting growing demands and complex quality standards.

Purpose of the Study:

  • To review and elucidate the diverse applications of Machine Learning (ML) in postharvest poultry meat processing.
  • To explore ML-driven techniques including imaging, spectroscopy, sensors, and genomic sequencing.
  • To identify challenges, barriers, and future directions for ML adoption in the poultry industry.

Main Methods:

  • Comprehensive literature review of Machine Learning applications in poultry meat processing.
Keywords:
AdulterationForeign materialIntelligent packagingMachine learningPoultry meat processingQuality controlSafety control and risk assessment

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  • Analysis of ML integration across various processing stages: operations, quality control, safety, and detection.
  • Exploration of specific ML-enabled technologies such as imaging, spectroscopy, and sensors.
  • Main Results:

    • Machine learning is successfully applied in smart processing, quality control, safety monitoring, risk assessment, foreign material detection, and adulteration identification.
    • ML-powered imaging, spectroscopy, and sensor technologies offer advanced analytical capabilities.
    • Challenges in ML adoption include data integration, cost, and workforce training, with potential solutions identified.

    Conclusions:

    • Machine learning offers significant potential to revolutionize the poultry industry, enhancing sustainability, intelligence, and resilience.
    • Adoption of ML can lead to a more digitalized poultry sector and food supply chain.
    • Further research and strategic implementation are key to overcoming adoption barriers and realizing ML's full benefits.