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Main Authors: Rodriguez, Marta Veganzones, Phan, Thinh, Fernandes, Arthur F. A., Breen, Vivian, Arango, Jesus, Kidd, Michael T., Le, Ngan
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.09155
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author Rodriguez, Marta Veganzones
Phan, Thinh
Fernandes, Arthur F. A.
Breen, Vivian
Arango, Jesus
Kidd, Michael T.
Le, Ngan
author_facet Rodriguez, Marta Veganzones
Phan, Thinh
Fernandes, Arthur F. A.
Breen, Vivian
Arango, Jesus
Kidd, Michael T.
Le, Ngan
contents Chick sexing, the process of determining the gender of day-old chicks, is a critical task in the poultry industry due to the distinct roles that each gender plays in production. While effective traditional methods achieve high accuracy, color, and wing feather sexing is exclusive to specific breeds, and vent sexing is invasive and requires trained experts. To address these challenges, we propose a novel approach inspired by facial gender classification techniques in humans: facial chick sexing. This new method does not require expert knowledge and aims to reduce training time while enhancing animal welfare by minimizing chick manipulation. We develop a comprehensive system for training and inference that includes data collection, facial and keypoint detection, facial alignment, and classification. We evaluate our model on two sets of images: Cropped Full Face and Cropped Middle Face, both of which maintain essential facial features of the chick for further analysis. Our experiment demonstrates the promising viability, with a final accuracy of 81.89%, of this approach for future practices in chick sexing by making them more universally applicable.
format Preprint
id arxiv_https___arxiv_org_abs_2410_09155
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Facial Chick Sexing: An Automated Chick Sexing System From Chick Facial Image
Rodriguez, Marta Veganzones
Phan, Thinh
Fernandes, Arthur F. A.
Breen, Vivian
Arango, Jesus
Kidd, Michael T.
Le, Ngan
Computer Vision and Pattern Recognition
Chick sexing, the process of determining the gender of day-old chicks, is a critical task in the poultry industry due to the distinct roles that each gender plays in production. While effective traditional methods achieve high accuracy, color, and wing feather sexing is exclusive to specific breeds, and vent sexing is invasive and requires trained experts. To address these challenges, we propose a novel approach inspired by facial gender classification techniques in humans: facial chick sexing. This new method does not require expert knowledge and aims to reduce training time while enhancing animal welfare by minimizing chick manipulation. We develop a comprehensive system for training and inference that includes data collection, facial and keypoint detection, facial alignment, and classification. We evaluate our model on two sets of images: Cropped Full Face and Cropped Middle Face, both of which maintain essential facial features of the chick for further analysis. Our experiment demonstrates the promising viability, with a final accuracy of 81.89%, of this approach for future practices in chick sexing by making them more universally applicable.
title Facial Chick Sexing: An Automated Chick Sexing System From Chick Facial Image
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2410.09155