CattleFaceNet: A cattle face identification approach based on RetinaFace and ArcFace loss
文献类型: 外文期刊
作者: Xu, Beibei 1 ; Wang, Wensheng 1 ; Guo, Leifeng 1 ; Chen, Guipeng 2 ; Li, Yongfeng 1 ; Cao, Zhen 1 ; Wu, Saisai 1 ;
作者机构: 1.Chinese Acad Agr Sci, Agr Informat Inst, Beijing 100086, Peoples R China
2.Jiangxi Acad Agr Sci, Agr Econ & Informat Inst, Nanchang 330200, Jiangxi, Peoples R China
3.Wageningen Univ & Res, Informat Technol Grp, NL-6708 PB Wageningen, Netherlands
关键词: Face recognition; RetinaFace; ArcFace loss; Deep learning; Precision livestock
期刊名称:COMPUTERS AND ELECTRONICS IN AGRICULTURE ( 影响因子:6.757; 五年影响因子:6.817 )
ISSN: 0168-1699
年卷期: 2022 年 193 卷
页码:
收录情况: SCI
摘要: Cattle identification is crucial to be registered for breeding association, food quality tracing, disease prevention and control and fake insurance claims. Traditional non-biometrics methods for cattle identification is not really satisfactory in providing reliability due to theft, fraud, and duplication. In this study, a computer vision technique was proposed to facilitate precision animal management and improve livestock welfare. This paper presents a novel face identification framework by integrating light-weight RetinaFace-mobilenet with Additive Angular Margin Loss (ArcFace), namely CattleFaceNet. RetinaFace-mobilenet is designed for face detection and location, and ArcFace is adopted to strengthen the within-class compactness and also between-class discrepancy during training. Experiments on real-word scenarios dataset prove that RetinaFace-mobilenet achieves superior detection performance and significantly accelerates the computation time against RetinaNet. Three loss functions utilized in human face recognition combined with RetinaFace-mobilenet are compared and results indict that the proposed CattleFaceNet outperforms others with identification accuracy of 91.3% and processing time of 24 frames per second (FPS). This research work demonstrates the potential candidate of CattleFaceNet for livestock identification in real time in practical production scenarios.
- 相关文献
作者其他论文 更多>>
-
A Large-Scale Dataset of Conservation and Deep Tillage in Mollisols, Northeast Plain, China
作者:Jiang, Fahui;Huang, Shangshu;Huang, Shangshu;Wu, Yan;Ul Islam, Mahbub;Dong, Fangjin;Cao, Zhen;Chen, Guohui;Guo, Yuming
关键词:conservation tillage; deep tillage; conventional tillage; random forest; meta-analysis; subsoiling; no-tillage; straw mulching; crop yield
-
An Assessment of Soil Loss by Water Erosion in No-Tillage and Mulching, China
作者:Cao, Zhen;Chen, Guohui;Huang, Shangshu;Jiang, Fahui;Cao, Zhen;Cao, Zhen;Chen, Guohui;Zhang, Song;Huang, Shangshu;Wu, Yan;Dong, Fangjin;Guo, Yuming;Wang, Jianhao
关键词:soil erosion; water erosion; RUSLE; crop residue; conservation tillage
-
Recognition of Cattle's Feeding Behaviors Using Noseband Pressure Sensor With Machine Learning
作者:Chen, Guipeng;Li, Cong;Guo, Yang;Shu, Hang;Cao, Zhen;Xu, Beibei
关键词:noseband pressure sensor; machine learning; XGB; behavior classification; feeding behaviors
-
Evaluation of Deep Learning for Automatic Multi-View Face Detection in Cattle
作者:Xu, Beibei;Wang, Wensheng;Guo, Leifeng;Zhang, Wenju;Li, Yongfeng;Wang, Wensheng;Wang, Wensheng;Guo, Leifeng;Chen, Guipeng;Wang, Yaowu
关键词:cattle face detection; RetinaNet; deep learning; precision livestock
-
Convolutional Rebalancing Network for the Classification of Large Imbalanced Rice Pest and Disease Datasets in the Field
作者:Yang, Guofeng;Chen, Guipeng;Li, Cong;Fu, Jiangfan;Guo, Yang;Liang, Hua;Yang, Guofeng;Chen, Guipeng;Li, Cong;Fu, Jiangfan;Guo, Yang;Liang, Hua
关键词:imbalanced dataset; convolutional neural network; image classification; feature fusion; rice pests and diseases
-
Self-Supervised Collaborative Multi-Network for Fine-Grained Visual Categorization of Tomato Diseases
作者:Yang, Guofeng;Chen, Guipeng;Yan, Zhiyan;Guo, Yang;Ding, Jian;He, Yong
关键词:Diseases; Agriculture; Training; Feature extraction; Annotations; Object detection; Image classification; Fine-grained visual categorization; multi-network; self-supervised; tomato diseases
-
Automated cattle counting using Mask R-CNN in quadcopter vision system
作者:Xu, Beibei;Wang, Wensheng;Guo, Leifeng;Falzon, Greg;Schneider, Derek;Falzon, Greg;Schneider, Derek;Kwan, Paul;Chen, Guipeng;Tait, Amy
关键词:Object detection; Deep learning; Remote monitoring; Livestock management; Quadcopter vision system