Detecting broiler chickens on litter floor with the YOLOv5-CBAM deep learning model

IF 8.2 Q1 AGRICULTURE, MULTIDISCIPLINARY
Yangyang Guo , Samuel E. Aggrey , Xiao Yang , Adelumola Oladeinde , Yongliang Qiao , Lilong Chai
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引用次数: 1

Abstract

For commercial broiler production, about 20,000–30,000 birds are raised in each confined house, which has caused growing public concerns on animal welfare. Currently, daily evaluation of broiler wellbeing and growth is conducted manually, which is labor-intensive and subjectively subject to human error. Therefore, there is a need for an automatic tool to detect and analyze the behaviors of chickens and predict their welfare status. In this study, we developed a YOLOv5-CBAM-broiler model and tested its performance for detecting broilers on litter floor. The proposed model consisted of two parts: (1) basic YOLOv5 model for bird or broiler feature extraction and object detection; and (2) the convolutional block attention module (CBAM) to improve the feature extraction capability of the network and the problem of missed detection of occluded targets and small targets. A complex dataset of broiler chicken images at different ages, multiple pens and scenes (fresh litter versus reused litter) was constructed to evaluate the effectiveness of the new model. In addition, the model was compared to the Faster R-CNN, SSD, YOLOv3, EfficientDet and YOLOv5 models. The results demonstrate that the precision, recall, F1 score and an [email protected] of the proposed method were 97.3%, 92.3%, 94.7%, and 96.5%, which were superior to the comparison models. In addition, comparing the detection effects in different scenes, the YOLOv5-CBAM model was still better than the comparison method. Overall, the proposed YOLOv5-CBAM-broiler model can achieve real-time accurate and fast target detection and provide technical support for the management and monitoring of birds in commercial broiler houses.

基于YOLOv5-CBAM深度学习模型的窝地板肉鸡检测
对于商业肉鸡生产,每个密闭的房子里饲养大约20000至30000只家禽,这引起了公众对动物福利的日益担忧。目前,肉鸡健康和生长的日常评估是手动进行的,这是劳动密集型的,主观上容易受到人为错误的影响。因此,需要一种自动工具来检测和分析鸡的行为,并预测它们的福利状况。在本研究中,我们开发了YOLOv5 CBAM肉鸡模型,并测试了其在窝底检测肉鸡的性能。所提出的模型由两部分组成:(1)用于鸟类或肉鸡特征提取和目标检测的YOLOv5基本模型;以及(2)卷积块注意力模块(CBAM),以提高网络的特征提取能力以及遮挡目标和小目标的漏检问题。构建了一个由不同年龄、多个围栏和场景(新鲜垃圾与重复使用垃圾)的肉鸡图像组成的复杂数据集,以评估新模型的有效性。此外,将该模型与Faster R-CNN、SSD、YOLOv3、EfficientDet和YOLOv5模型进行了比较。结果表明,该方法的准确率、召回率、F1评分和[电子邮件保护]分别为97.3%、92.3%、94.7%和96.5%,优于对照模型。此外,比较不同场景下的检测效果,YOLOv5 CBAM模型仍然优于比较方法。总体而言,所提出的YOLOv5 CBAM肉鸡模型可以实现实时、准确、快速的目标检测,并为商业肉鸡饲养场的鸟类管理和监测提供技术支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Artificial Intelligence in Agriculture
Artificial Intelligence in Agriculture Engineering-Engineering (miscellaneous)
CiteScore
21.60
自引率
0.00%
发文量
18
审稿时长
12 weeks
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