A Machine Vision System for Detecting Fertile Eggs in the Incubation Industry

被引:1
作者
Mahdi Hashemzadeh
Nacer Farajzadeh
机构
[1] Azarbaijan Shahid Madani University,Faculty of Information Technology and Computer Engineering
来源
International Journal of Computational Intelligence Systems | 2016年 / 9卷
关键词
Machine Vision; Image Processing; Egg; Fertility Detection; Incubation Industry; Auto-Candling;
D O I
暂无
中图分类号
学科分类号
摘要
One of the important factors in increasing the productivity of the incubation industry is to be sure that the eggs placed in the incubators are fertile. In this research, a fertility detection machine vision system is developed and evaluated. To this end, a mechatronic machine is fabricated for acquiring accurate digital images of eggs without harming them. An appropriate and cheap light source is also introduced for illuminating the eggs, which potentially enables a CCD camera to obtain good quality and informative images from inner side of the eggs. Finally, a robust machine vision algorithm is developed to process the captured images and distinguish fertile eggs from infertile ones. In order to evaluate the system, a large egg image dataset is provided using 240 incubated eggs (including 190 fertile and 50 infertile eggs). The fertility detection accuracy of the system on the provided dataset reaches 47.13% at day 1 of incubation, 81.41% at day 2, 93.08% at day 3, 97.73% at day 4, and 98.25% at day 5. Comparisons with existing approaches show that the proposed method achieves a superior performance. The obtained results indicate that the proposed system is highly reliable and applicable in the incubation industry.
引用
收藏
页码:850 / 862
页数:12
相关论文
共 48 条
[1]  
Liu L(2013)Detecting fertility and early embryo development of chicken eggs using near-infrared hyperspectral imaging Food and Bioprocess Technology 6 2503-2513
[2]  
Ngadi M(2008)Imaging system with modified-pressure chamber for crack detection in shell eggs Sensing and Instrumentation for Food Quality and Safety 2 116-122
[3]  
Lawrence K C(2010)Eggshell crack detection using a wavelet-based support vector machine Computers and Electronics in Agriculture 70 135-143
[4]  
Yoon S C(2012)A machine vision system for identification of micro-crack in egg shell Journal of Food Engineering 109 127-134
[5]  
Heitschmidt G W(2012)Automatic identification of defects on eggshell through a multispectral vision system Food and Bioprocess Technology 5 3042-3050
[6]  
Jones D R(1998)Development and evaluation of an expert system for egg sorting Computers and Electronics in Agriculture 20 97-116
[7]  
Park B(2008)Data-based design of an intelligent control chart for the daily monitoring of the average egg weight Computers and Electronics in Agriculture 61 222-232
[8]  
Deng X(2014)Eggshell spot scoring methods cannot be used as a reliable proxy to determine pigment quantity Journal of avian biology 45 94-102
[9]  
Wang Q(2002)Detection of early embryonic development in chicken eggs using visible light transmission British poultry science 43 204-212
[10]  
Chen H(2008)Fertility and embryo development of broiler hatching eggs evaluated with a hyperspectral imaging and predictive modeling system International journal of poultry science 7 1001-1004