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Classification of Biscuit Quality With Deep Learning Algorithms.

Oya Kilci1, Yusuf Eryesil2, Murat Koklu2

  • 1Graduate School of Natural and Applied Sciences, Department of Mechatronics Engineering, Selcuk University, Konya, Türkiye.

Journal of Food Science
|July 18, 2025
PubMed
Summary
This summary is machine-generated.

Deep learning models significantly improve biscuit quality control by detecting defects. EfficientNet achieved high accuracy, showcasing potential for automated industrial food production inspection.

Keywords:
biscuit clasificationdeep learninggrad‐CAMmachine learningquality control

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Area of Science:

  • Food Science and Technology
  • Computer Science
  • Artificial Intelligence

Background:

  • Traditional quality control in food production is labor-intensive and prone to human error.
  • Automated defect detection systems are needed to enhance efficiency and reduce costs in biscuit manufacturing.

Purpose of the Study:

  • To develop and evaluate deep learning models for automated detection of defective biscuits.
  • To compare the performance of different deep learning architectures for binary and multi-class defect classification.

Main Methods:

  • Creation of two datasets: one for binary classification (defect/no defect) and one for multi-class classification (overcooked, texture defect, incomplete).
  • Training and evaluation of deep learning models including EfficientNet, ResNet, XceptionNet, and MobileNet.
  • Utilizing Grad-CAM for model interpretability to visualize attention on defect regions.

Main Results:

  • EfficientNet demonstrated superior performance with 93.89% accuracy in binary classification and 95.03% in multi-class classification.
  • ResNet achieved comparable results, while XceptionNet and MobileNet showed competitive F1 scores, especially for texture defects.
  • Grad-CAM analysis confirmed EfficientNet's effective focus on critical defect areas.

Conclusions:

  • Deep learning models, particularly EfficientNet, offer a viable solution for efficient and precise automated quality control in biscuit production.
  • The study highlights the potential of AI-driven inspection systems to reduce errors, time, and costs in industrial food manufacturing.
  • These findings support the integration of advanced machine learning techniques for enhanced food product quality assurance.