TY - JOUR T1 - Automatic Detection of Eggshell Defects Based on Machine Vision AU - , H.R. Pourreza AU - , A.H. Naebi AU - , S. Fazeli AU - , B. Taghizade JO - Journal of Animal and Veterinary Advances VL - 7 IS - 10 SP - 1200 EP - 1203 PY - 2008 DA - 2001/08/19 SN - 1680-5593 DO - javaa.2008.1200.1203 UR - https://makhillpublications.co/view-article.php?doi=javaa.2008.1200.1203 KW - Machine vision KW -image processing KW -histogram KW -high pass filter KW -sorting KW -poultry industry KW -egg AB - Grading defected eggs is one of the important needs of poultry industry, because of sanitary and also economic reasons. Separating cracked and dirty eggs in primary steps of packing is an inevitable necessity to protect other eggs and mechanical parts from contamination. This study presents an automatic method based on colored image processing for recognition of eggshell defects. This method is based on recognition of discontinuities in image caused by eggshell defects. This algorithm uses a high pass filter to determine discontinuities. Finally, the deficiency of an egg is considered after applying an adaptive threshold to the filtered picture. The result of this method is more reliable than the methods given before. ER -