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Performance of Classification Models in Japanese Quail Egg Sexing

机译:日本鹌鹑蛋清分类模型的表现

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The method of identifying the gender of an avian egg before hatching, egg sexing, has been one of the interesting fields of research in poultry and egg industries to improve its production with reduced costs. Researchers started to study and suggested various scientific methods to determine the sex of avian eggs like chicken and duck. The study proposed the extraction of seven (7) Japanese quail egg morphology features using image processing techniques and edge detection models. Kernel Naïve Bayes, Logistic Regression, and Quadratic SVM models tested and validated Japanese quail eggs' extracted morphology data to classify their sexes. Confusion matrices were used to determine the male, female and average sex classification accuracy rate of each model. Results show that two (2) morphology features of the Japanese quail egg, such as eccentricity and shape index, can be used as significant factors in classifying its sexes. Gaussian Naïve Bayes model is the best classifier to test and validate the morphology characteristics and data of Japanese quail eggs. It has a classification rate of 85.14% for males, 80.16% for females, and an average of 82.88% for both sexes.
机译:在孵化前鉴定禽蛋的性别的方法,蛋清,鸡蛋性交是家禽和鸡蛋行业的有趣领域之一,以提高其产量降低。研究人员开始学习并建议各种科学方法来确定鸡肉和鸭子等禽蛋的性别。该研究提出了使用图像处理技术和边缘检测模型提取七(7)颗日本鹌鹑蛋形态特征。内核Naïve贝叶斯,Logistic回归和二次SVM模型测试和验证了日本鹌鹑蛋的提取形态数据,以分类他们的性别。混淆矩阵用于确定每个模型的男性,女性和平均性别分类精度率。结果表明,日本鹌鹑蛋的两(2)个形态特征,如偏心和形状指数,可作为分类其性别的重要因素。高斯天真普通模型是测试和验证日本鹌鹑蛋的形态特征和数据的最佳分类器。它的分类率为85.14%,女性为80.16%,两性平均为82.88%。

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