奶牛
鉴定(生物学)
双重目的
生产(经济)
计算机科学
牲畜
农业科学
工程类
环境科学
动物科学
地理
生物
机械工程
植物
经济
宏观经济学
林业
作者
Vincent Nwaneri,Daniel Dooyum Uyeh,Patience Mba,Daniel Morris
摘要
In the global agricultural landscape, dairy cattle are of paramount economic importance because they produce essential products like milk, butter, and cheese. Ensuring their well-being and sustaining production necessitate effective feed management. Traditional methods for assessing feed quality are labor-intensive and destructive, posing risks of resource wastage and production interruptions. This study addresses this challenge by introducing a novel approach to classify feed materials and Total Mixed Rations (TMR) for dairy cattle. Utilizing RGB images and a dual-branch neural network based on the VGG16 architecture, the model achieved 86.72% accuracy in feed categorization. This automates real-time feed analysis, offering high precision, and lays the foundation for further advancements in precision animal production through deep learning in practical agricultural contexts.
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