利用计算机视觉技术和CNN网络进行奶牛行为识别

R. Avanzato, F. Beritelli, Valerio Francesco Puglisi
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引用次数: 1

摘要

近年来,精密育种自动化监测系统的应用有了很大的发展。特别是,一些研究已经解决了使用计算机视觉识别奶牛行为的可能性,以及在谷仓内唯一识别和定位单个奶牛的机会。在这项研究中,作者提出了一个识别牛棚内奶牛行为的系统,该系统使用一种特殊类型的卷积神经网络(CNN) YOLOv5,并通过多目标识别来估计牛的位置。这些记录来自放置在谷仓内的多个摄像机,一个包含多个“奶牛”对象的混合庞大数据集被获得,然后被标记为“奶牛站立”和“奶牛躺着”两类。训练阶段结束后,对网络进行测试。使用深度学习(DL)模型获得的结果显示,在训练阶段,准确率为94%,精密度为96%,召回率为92%。在推理阶段,准确率和查全率分别达到88%和91%。
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Dairy Cow Behavior Recognition Using Computer Vision Techniques and CNN Networks
The application of automated monitoring systems for precision breeding has seen a great increase in recent years. In particular, several studies have addressed the possibility of recognizing cow behavior using computer vision, as well as the opportunity of uniquely identifying and locating individual cows within the barn. In this study, the authors propose a system for recognizing cow behavior within the barn, using a particular type of Convolutional Neural Network (CNN), YOLOv5, and estimation of cattle position via Multi-object recognition. The recordings are obtained from multiple cameras placed inside the barn, a mixed and vast dataset containing several “Cow” objects was obtained and then labeled in two classes “Cow_Standing” and “Cow_Lying.” After the training phase, testing of the network was carried out. The results obtained using this Deep Learning (DL) model, show 94% accuracy, 96% precision and 92% recall in the training phase. In the inference phase, accuracy and recall of 88% and 91% were obtained, respectively.
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