Sick and Dead Chicken Detection System Based on YOLO Algorithm

Syafaah, Lailis and Faruq, Amrul and Setyawan, Novendra (2024) Sick and Dead Chicken Detection System Based on YOLO Algorithm. Ingénierie des Systèmes d’Information (ISI) Journal, 9 (25). ISSN 2116-7125

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Abstract

The poultry industry faces significant challenges in maintaining the health and welfare of chickens, with early detection of sick or dead birds being crucial for effective management and disease control. This paper presents a novel Sick and Dead Chicken Detection System leveraging the YOLO (You Only Look Once) algorithm, a state-of-the-art object detection framework. Our system employs YOLO's real-time image processing capabilities to identify and classify sick and deceased chickens from video feeds or images with high accuracy and speed. Currently chicken farmers are still unable to develop their farms to be able to keep up with increasing needs, this is due to the many chicken farming systems that have not been maximized in the development of their livestock systems, as one example is controlling sick chickens which are still being checked manually. system utilizes YOLO's real-time image processing capabilities to identify and classify sick and deceased chickens by paying attention to symptoms of disease including the movement of chickens by utilizing image processing with the YOLO algorithm, there are several stages in implementing YOLO, namely dataset collection and annotation, preprocessing, dataset division, label file creation, validation and hyperparameter setup, training and model application. We trained our model on a dataset comprising 435 annotated images of chickens exhibiting various health conditions. The proposed system enhances operational efficiency, minimizes human error, and supports timely interventions. Results indicate a significant improvement in detection accuracy and response time compared to traditional methods. The performance of the model applied using the confusion matrix method, so that good results are obtained by applying the YOLOv8 algorithm with an F1 rate of 94%, Precision 100%, Confidence 89.2%, Recall-Confidence of 100%, and Precision-Recall by 97% mAP@0.5. Each variable obtained an accuracy of 71.25% for dead chickens, 98.25% for sick chickens and healthy chickens.

Item Type: Article
Keywords: Sick Death Chicken, Deep Learning, YOLO
Subjects: T Technology > TK Electrical engineering. Electronics Nuclear engineering
Divisions: Faculty of Engineering > Department of Electrical Engineering (20201)
Depositing User: faruq Amrul Faruq
Date Deposited: 27 Dec 2024 08:58
Last Modified: 27 Dec 2024 08:58
URI: https://eprints.umm.ac.id/id/eprint/13111

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