Detection of Broken and Good Eggs Using Image Processing and Deep Learning

Last modified: February 25, 2026
Estimated reading time: 1 min
Title: Detection of Broken and Good Eggs Using Image Processing and Deep Learning
ชื่อเรื่อง: การตรวจภาพไข่แตกและไข่ดีด้วยการประมวลผลด้วยภาพและการเรียนรู้ Deep Learning
Researcher: Kanit Thongpisitsombat
Degree: B.S. (Physics)
Major: Bachelor of Science Program
Faculty of study: Department of Physics, Faculty of Science
Academic year: 2568 (2025)
Published: The 9th RMUTR Conference and The 4 th RICE & Sus–LaB 6 International Conference “Green Transformation: Path a Sustainable Future” November 18 – 20, 2025 (pp. 27-37)   Click

Abstract

     This paper presents a method for detecting broken and intact eggs using image processing and deep learning. The proposed approach begins with the creation of an image dataset containing both good and broken eggs. A total of 457 images were collected, from which 30 eggs were extracted, annotated, and cropped, resulting in a dataset of 13,710 egg samples. The methodology involves two key pipelines: a deep learning–based classification pipeline and a saliency-based analysis pipeline. In the classification pipeline, two models were utilized. A TensorFlow-based convolutional neural network (CNN) was trained on the processed dataset, achieving an accuracy of 94.88%. Additionally, YOLOv8, a real-time object detection model, was employed and attained an accuracy of 90.00% for egg classification. In the second pipeline, a zero-shot saliency score technique was applied to highlight and quantify the presence of cracks in eggs without requiring model training. The saliency score correlates with surface damage, where any score greater than 0% indicates a broken egg. This dual-method framework, which combines supervised classification and unsupervised saliency analysis, offers a robust and automated solution for egg quality inspection, with potential applications in agricultural and industrial automation systems.

Keywords: Broken Eggs Detection, Image Processing, Deep Learning, Tensor Flow-based Model, YOLO V8


ผศ.คณิต ทองพิสิฐสมบัติ – Assist. Prof. Kanit Thongpisisombat. 2568 (2025). Detection of Broken – การตรวจภาพไข่แตกและไข่ดีด้วยการประมวลผลด้วยภาพและการเรียนรู้ Deep Learning. รายงานการประชุมวิชาการ – Conference Proceedings. วิทยาศาสตร์และเทคโนโลยี|Science and Technology. วิทยาศาสตร์ ภาควิชาฟิสิกส์ – Department of Physics, Faculty of Science. วิทยาศาสตรบัณฑิต – Bachelor of Science Program. วท.บ. (ฟิสิกส์) – B.S. (Physics). Bangkok: Siam University

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