使用深度学习的智能家禽养殖场增强机器视觉系统

IF 5.7 Q1 AGRICULTURAL ENGINEERING
P. Natho , S. Boonying , P. Bonguleaum , N. Tantidontanet , L. Chamuthai
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引用次数: 0

摘要

本研究面对当前家禽生产中的一些主要问题,如疾病传播、缺乏劳动力、缺乏有效监测以及对更高动物福利的需求增加。为了解决这些问题,本文提出了一种基于深度学习的复杂机器视觉系统,其中使用YOLOv11算法对家禽进行自动监控和管理。330张鸡的图像数据集来自泰国不同环境条件下的农场,并通过旋转、亮度修改和饱和度修改技术增强到1716张图像。使用NVIDIA Jetson Orin Nano Developer Kit对YOLOv11模型进行训练,并对精度、召回率和平均精度(mAP)进行评估。该模型具有较高的准确率,精密度、召回率和mAP分别为0.964、0.938和0.963。光学和热成像一起使系统能够克服各种照明和环境条件下的困难。实施结果证明了对多只鸡的实时监测和跟踪,有助于疾病预防、饲料效率和整体农场管理。本研究通过提供完全自动化、可扩展和非常精确的家禽监测系统,促进现代家禽养殖的可持续性、运营效率和动物福利的提高,为智能农业的发展做出了贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An enhanced machine vision system for smart poultry farms using deep learning
This study confronts some major issues in current poultry production such as disease spread, lack of labor, lack of efficient monitoring, and increased demand for greater animal welfare. To address all these problems, a sophisticated machine vision system using deep learning is suggested, in which the YOLOv11 algorithm has been used to monitor and manage poultry automatically. The data set of 330 images of chickens was obtained from farms in Thailand with diverse environmental conditions and augmented to 1,716 images through rotation, modification of brightness, and saturation modification techniques. The model YOLOv11 was trained using the NVIDIA Jetson Orin Nano Developer Kit and evaluated in terms of precision, recall, and mean average precision (mAP). The model was highly accurate, with 0.964, 0.938, and 0.963 in precision, recall, and mAP, respectively. Optical and thermal imaging together enabled the system to overcome difficulties in varying lighting and environmental conditions. Real-time monitoring and tracking of multiple chickens were demonstrated by implementation results, which assisted in disease prevention, feed efficiency, and overall farm management. This research contributes to smart farming development through the provision of a fully automated, scalable, and very accurate poultry monitoring system to promote sustainability, efficiency of operation, and increased animal welfare in modern poultry farming.
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CiteScore
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