Dandıl Emre, Çevik Kerim Kürşat, Boğa Mustafa
Department of Computer Engineering, Faculty of Engineering, Bilecik Şeyh Edebali University, Bilecik 11230, Turkey.
Department of Management Information Systems, Faculty of Applied Sciences, Akdeniz University, Antalya 07070, Turkey.
Vet Sci. 2024 Sep 1;11(9):399. doi: 10.3390/vetsci11090399.
Body condition score (BCS) is a common tool used to assess the welfare of dairy cows and is based on scoring animals according to their external appearance. If the BCS of dairy cows deviates from the required value, it can lead to diseases caused by metabolic problems in the animal, increased medication costs, low productivity, and even the loss of dairy cows. BCS scores for dairy cows on farms are mostly determined by observation based on expert knowledge and experience. This study proposes an automatic classification system for BCS determination in dairy cows using the YOLOv8x deep learning architecture. In this study, firstly, an original dataset was prepared by dividing the BCS scale into five different classes of Emaciated, Poor, Good, Fat, and Obese for images of Holstein and Simmental cow breeds collected from different farms. In the experimental analyses performed on the dataset prepared in this study, the BCS values of 102 out of a total of 126 cow images in the test set were correctly classified using the proposed YOLOv8x deep learning architecture. Furthermore, an average accuracy of 0.81 was achieved for all BCS classes in Holstein and Simmental cows. In addition, the average area under the precision-recall curve was 0.87. In conclusion, the BCS classification system for dairy cows proposed in this study may allow for the accurate observation of animals with rapid declines in body condition. In addition, the BCS classification system can be used as a tool for production decision-makers in early lactation to reduce the negative energy balance.
体况评分(BCS)是评估奶牛福利的常用工具,它基于根据动物的外观对其进行评分。如果奶牛的BCS偏离所需值,可能会导致动物因代谢问题引发疾病、用药成本增加、生产力低下,甚至奶牛死亡。农场中奶牛的BCS评分大多由基于专业知识和经验的观察来确定。本研究提出了一种使用YOLOv8x深度学习架构来确定奶牛BCS的自动分类系统。在本研究中,首先,通过将BCS量表分为消瘦、瘦弱、良好、肥胖和过度肥胖五个不同类别,为从不同农场收集的荷斯坦和西门塔尔奶牛品种的图像准备了一个原始数据集。在对本研究中准备的数据集进行的实验分析中,使用所提出的YOLOv8x深度学习架构正确分类了测试集中总共126张奶牛图像中的102张的BCS值。此外,荷斯坦和西门塔尔奶牛所有BCS类别的平均准确率达到了0.81。此外,精确率-召回率曲线下的平均面积为0.87。总之,本研究中提出的奶牛BCS分类系统可能有助于准确观察体况迅速下降的动物。此外,BCS分类系统可以作为早期泌乳期生产决策者减少负能量平衡的工具。