Detection of egg stains based on local texture feature clustering
Abstract
Keywords: eggs, eggshell dirt stains, computer vision, local texture feature, FCM, egg classifying
DOI: 10.25165/j.ijabe.20181101.2592
Citation: Yang Q H, Jia M M, Xun Y, Bao G J. Detection of egg stains based on local texture feature clustering. Int J Agric & Biol Eng, 2018; 11(1): 199–205.
Keywords
Full Text:
PDFReferences
Soltani M, Omid M, Alimardani R. Egg volume prediction using machine vision technique based on pappus theorem and artificial neural network. Journal of Food Science and Technology, 2015; 52(5): 3065–3071.
Zhang W, Wu X, Qiu Z, He Y. A novel method for measuring the volume and surface area of egg. Journal of Food Engineering, 2015; 170: 160–169.
Zhu Z H, Liu T, Xie D J, Wang Q H, Ma M H. Nondestructive detection of infertile hatching eggs based on spectral and imaging information. Int J Agric & Biol Eng, 2015; 8(4): 69–76.
Ketelaere B D, Coucke P, Baerdemaeker J D. Eggshell crack detection based on acoustic resonance frequency analysis. Journal of Agricultural Engineering Research, 2000; 76(2): 157–163.
Cheng J, Xie L, Ying Y. Eggshell crack detection based on the time-domain acoustic signal of rolling eggs on a step-plate. Journal of Food Engineering, 2015; 153(1): 53–62.
Chen M, Zhang L, Xu H. On-line detection of blood spot introduced into brown-shell eggs using visible absorbance spectroscopy. Biosystems Engineering, 2015; 131: 95–101.
Detector: Abnormal Egg Detector. Available: https://www.nabel.co.jp/ english/product/abd.html. Accessed on [2016/5/10]. (in Chinese)
Dehrouyeh M H, Omid M, Ahmadi H, Mohtasebi S S, Jamzad M. Grading and quality inspection of defected eggs using machine vision. International Journal of Advanced Science & Technology, 2010; 16: 23–30.
Mor-Mur M, Yuste J. Emerging bacterial pathogens in meat and poultry: An overview. Food and Bioprocess Technology, 2010; 3(1): 24.
Wesley I V, Muraoka W T. Time of entry of salmonella, and campylobacter, into the Turkey Brooder House. Food and Bioprocess Technology, 2011; 4(4): 616–623.
Patel VC, McClendon R W, Goodrum J W. Detection of blood spots and dirt stains in eggs using computer vision and neural networks. Applied Engineering in agriculture, 1996; 12(2): 253–258.
Patel V C, Mcclendon R W, Goodrum J W. Color computer vision and
artificial neural networks for the detection of defects in poultry eggs. Artificial Intelligence Review, 1998; 12(1): 163–176.
Garcia-Alegre M C, Ribeiro A, Guinea D, Cristobal G. Eggshell defects detection based on color processing. Proceedings of SPIE - The International Society for Optical Engineering, 2007; 3966: 280–287.
Ribeiro A, García-Alegre M C, Guinea D, Cristobal G. Automatic rules generation by GA for eggshell defect classification. Networks, 2000; 4: 5.
Mertens K, Ketelaere B D, Kamers B, Bamelis F R, Kemps B J, Verhoelst E M, et al. Dirt detection on brown eggs by means of color computer vision. Poultry Science, 2005; 84(10): 1653–1659.
Lunadei L, Ruiz-Garcia L, Bodria L, Guidetti R. Automatic identification of defects on eggshell through a multispectral vision system. Food and Bioprocess Technology, 2012; 5(8): 3042–3050.
Arivazhagan S, Shebiah R N, Sudharsan H, Kannan R R, Ramesh R. External and internal defect detection of egg using machine vision. Journal of Emerging Trends in Computing and Information Sciences, 2013; 4(3): 257–262.
Cen Y K. Research on quality inspection of eggs based on machine vision. Master dissertation. Hangzhou: Zhejiang University, 2006. (in Chinese)
Ma L, Fan Y L. Texture image analysis. Beijing: Science Press, 2009. p231. (in Chinese)
Wang W F, Ma L, Yang L. Liver contour extraction using modified snake with morphological multiscale gradients. 2008 International Conference on Computer Science and Software Engineering, 2008; 6: 117–120.
Duan Q, Chen P C, Zou Q H. Method for egg surface area estimation based on computer vision. Journal of Anhui Agricultural University, 2013; 40(2): 342–344. (in Chinese)
Tu K, Pan L Q, Yang J L, Su Z P, Yu X. Dirt detection on brown eggs based on computer vision. Journal of Jiangsu University (Natural Science Edition), 2007; 28(3): 189–192. (in Chinese)
United States Standards, Grades, and Weight Classes for Shell Eggs. AMS 56. 2000. Available: https://www.ams.usda.gov/ grades-standards/eggs. Accessed on [2016-5-12].
Copyright (c)