Inicio  /  Agriculture  /  Vol: 12 Par: 9 (2022)  /  Artículo
ARTÍCULO
TITULO

Automatic Position Detection and Posture Recognition of Grouped Pigs Based on Deep Learning

Hengyi Ji    
Jionghua Yu    
Fengdan Lao    
Yanrong Zhuang    
Yanbin Wen and Guanghui Teng    

Resumen

The accurate and rapid detection of objects in videos facilitates the identification of abnormal behaviors in pigs and the introduction of preventive measures to reduce morbidity. In addition, accurate and effective pig detection algorithms provide a basis for pig behavior analysis and management decision-making. Monitoring the posture of pigs can enable the detection of the precursors of pig diseases in a timely manner and identify factors that impact pigs? health, which helps to evaluate their health status and comfort. Excessive sitting represents abnormal behavior when pigs are frustrated in a restricted environment. The present study focuses on the automatic recognition of standing posture and lying posture in grouped pigs, which shows a lack of recognition of sitting posture. The main contributions of this paper are as follows: A human-annotated dataset of standing, lying, and sitting postures captured by 2D cameras during the day and night in a pig barn was established, and a simplified copy, paste, and label smoothing strategy was applied to solve the problem of class imbalance caused by the lack of sitting postures among pigs in the dataset. The improved YOLOX has an average precision with an intersection over union threshold of 0.5 (AP0.5) of 99.5% and average precision with an intersection over union threshold of 0.5?0.95 (AP0.5?0.95) of 91% in pig position detection; an AP0.5 of 90.9% and an AP0.5?0.95 of 82.8% in sitting posture recognition; a mean average precision with intersection over union threshold of 0.5 (mAP0.5) of 95.7% and a mean average precision with intersection over union threshold of 0.5?0.95 (mAP0.5?0.95) of 87.2% in all posture recognition. The method proposed in our study can improve the position detection and posture recognition of grouped pigs effectively, especially for pig sitting posture recognition, and can meet the needs of practical application in pig farms.

 Artículos similares

       
 
Linlu Zu, Mingzheng Han, Jiuqin Liu, Pingzeng Liu, Tianhua Li and Fei Su    
This paper proposed a whole process tomato harvester with a nondestructive post-harvest collection operation mode, which was aimed to solve the high damage rate problem during the automatic greenhouse tomato harvesting process. The post-harvest device ma... ver más
Revista: Agriculture

 
Yourui Huang, Jiahao Fu, Shanyong Xu, Tao Han and Yuwen Liu    
To improve the positioning accuracy and reliability of autonomous navigation agricultural machinery and reduce the cost of high-precision positioning, an integrated navigation system based on Real-Time Dynamic Kinematic BeiDou Navigation Satellite System... ver más
Revista: Agriculture

 
Hongyun Hao, Peng Fang, Enze Duan, Zhichen Yang, Liangju Wang and Hongying Wang    
Stacked cage is the main breeding method of the large-scale farm in China. In broiler farms, dead broiler inspection is a routine task in the breeding process. It refers to the manual inspection of all cages and removal of dead broilers in the broiler ho... ver más
Revista: Agriculture

 
Juan Guerra Hernandez,Eduardo Gonzalez-Ferreiro,Alexandre Sarmento,João Silva,Alexandra Nunes,Alexandra Cristina Correia,Luis Fontes,Margarida Tomé,Ramon Diaz-Varela     Pág. eSC09
Aim of study: The study aims to analyse the potential use of low-cost unmanned aerial vehicle (UAV) imagery for the estimation of Pinus pinea L. variables at the individual tree level (position, tree height and crown diameter).Area of study: This study w... ver más
Revista: Forest Systems

 
Kenneth Olofsson and Johan Holmgren    
A method for automatic stem detection and stem profile estimation based on terrestrial laser scanning (TLS) was validated. The root-mean-square error was approximately 1 cm for stem diameter estimations. The method contains a new way of extracting the fl... ver más
Revista: Forests