Castro Júnior Sérgio Luís de, Cândido Ana Elisa Custódio Montes, Silva Ana Carolina de Sousa, da Silva Iran José Oliveira
Environment Livestock Research Group (NUPEA), Department of Biosystems Engineering, ''Luiz de Queiroz'' College of Agriculture, University of São Paulo, Piracicaba, São Paulo, Brazil.
Regional Research Center of Ribeirão Preto, Institute of Animal Science, Ribeirão Preto, São Paulo, Brazil.
Poult Sci. 2025 Jul 26;104(10):105612. doi: 10.1016/j.psj.2025.105612.
Eggshell quality is a determining factor in food safety, production efficiency, and the commercial acceptance of eggs. This study proposed the development and validation of an automated system for measuring eggshell translucency using computer vision and machine learning. A total of 326 commercial eggs from different production systems, with white and brown shells, were analyzed. Images were captured in a controlled environment and digitally processed to extract quantitative translucency measurements. The obtained values were compared with traditional visual classification and used in supervised classification models (KNN, SVM, and Random Forest). The SVM model showed the best performance, with accuracy exceeding 90 % in distinguishing translucency levels. Additionally, predictive models (Multiple Linear Regression and SVM) were tested to estimate intrusive variables based on translucency, revealing moderate correlations, particularly with shell thickness and shell weight. It is concluded that translucency can be accurately quantified through automated techniques, with potential application in the screening and quality control of commercial eggs, although it should be used as a complementary indicator alongside other technical parameters.
蛋壳质量是食品安全、生产效率和鸡蛋商业认可度的一个决定性因素。本研究提出开发并验证一种利用计算机视觉和机器学习来测量蛋壳半透明度的自动化系统。对来自不同生产系统的326枚白色和棕色蛋壳的商业鸡蛋进行了分析。在可控环境下采集图像并进行数字处理,以提取半透明度的定量测量值。将获得的值与传统视觉分类进行比较,并用于监督分类模型(KNN、支持向量机和随机森林)。支持向量机模型表现最佳,在区分半透明度水平方面准确率超过90%。此外,还测试了预测模型(多元线性回归和支持向量机),以根据半透明度估计侵入性变量,结果显示存在中度相关性,特别是与蛋壳厚度和蛋壳重量的相关性。研究得出结论,虽然半透明度应作为其他技术参数的补充指标,但通过自动化技术可以准确量化半透明度,并在商业鸡蛋的筛选和质量控制中具有潜在应用价值。