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Sex Detection in the Early Stage of Feretilized Chicken Eggsvia Image Recognition


Affiliations
1 Department of Computer Science, Dokuz Eylul University, Izmir, Turkey
 

Culling newly hatched male chicks in industrial hatcheries poses a serious ethical problem. Both laying and broiler breeders need males, but it is a problem because they are produced more than needed. Being able to determine the sex of chicks in the egg at the beginning or early stage of incubation can eliminate ethical problems as well as many additional costs. When we look at the literature, the methods used are very costly, low in applicability, invasive, inadequate in accuracy, or too late to eliminate ethical problems. Considering the embryo's development, the earliest observed candidate feature for sex determination is blood vessels. Detection from blood vessels can eliminate ethical issues, and these vessels can be seen when light is shined into the egg until the first seven days. In this study, sex determination was made by morphological analysis from embryonic vascular images obtained in the first week when the light was shined into the egg using a standard camera without any invasive procedure to the egg.

Keywords

In Ovo Sexing, Sexing of Chicken Embryo, Chicken Egg Gender, Image Processing.
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  • Sex Detection in the Early Stage of Feretilized Chicken Eggsvia Image Recognition

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Authors

Ufuk Asil
Department of Computer Science, Dokuz Eylul University, Izmir, Turkey
Efendi Nasibov
Department of Computer Science, Dokuz Eylul University, Izmir, Turkey

Abstract


Culling newly hatched male chicks in industrial hatcheries poses a serious ethical problem. Both laying and broiler breeders need males, but it is a problem because they are produced more than needed. Being able to determine the sex of chicks in the egg at the beginning or early stage of incubation can eliminate ethical problems as well as many additional costs. When we look at the literature, the methods used are very costly, low in applicability, invasive, inadequate in accuracy, or too late to eliminate ethical problems. Considering the embryo's development, the earliest observed candidate feature for sex determination is blood vessels. Detection from blood vessels can eliminate ethical issues, and these vessels can be seen when light is shined into the egg until the first seven days. In this study, sex determination was made by morphological analysis from embryonic vascular images obtained in the first week when the light was shined into the egg using a standard camera without any invasive procedure to the egg.

Keywords


In Ovo Sexing, Sexing of Chicken Embryo, Chicken Egg Gender, Image Processing.

References