Redirigiendo al acceso original de articulo en 17 segundos...
Inicio  /  Agriculture  /  Vol: 14 Par: 4 (2024)  /  Artículo
ARTÍCULO
TITULO

Analysis of Various Machine Learning Algorithms for Using Drone Images in Livestock Farms

Jerry Gao    
Charanjit Kaur Bambrah    
Nidhi Parihar    
Sharvaree Kshirsagar    
Sruthi Mallarapu    
Hailong Yu    
Jane Wu and Yunyun Yang    

Resumen

With the development of artificial intelligence, the intelligence of agriculture has become a trend. Intelligent monitoring of agricultural activities is an important part of it. However, due to difficulties in achieving a balance between quality and cost, the goal of improving the economic benefits of agricultural activities has not reached the expected level. Farm supervision requires intensive human effort and may not produce satisfactory results. In order to achieve intelligent monitoring of agricultural activities and improve economic benefits, this paper proposes a solution that combines unmanned aerial vehicles (UAVs) with deep learning models. The proposed solution aims to detect and classify objects using UAVs in the agricultural industry, thereby achieving independent agriculture without human intervention. To achieve this, a highly reliable target detection and tracking system is developed using Unmanned Aerial Vehicles. The use of deep learning methods allows the system to effectively solve the target detection and tracking problem. The model utilizes data collected from DJI Mirage 4 unmanned aerial vehicles to detect, track, and classify different types of targets. The performance evaluation of the proposed method shows promising results. By combining UAV technology and deep learning models, this paper provides a cost-effective solution for intelligent monitoring of agricultural activities. The proposed method offers the potential to improve the economic benefits of farming while reducing the need for intensive hum.

 Artículos similares

       
 
Wuying Chen, Jing Li, Lijun Fan, Dandan Qi, Honglu Zhang, Yongchao Hao, Mingmin Liang, Cunyao Bo, Silong Sun, Xiaoqian Wang, Anfei Li, Hongwei Wang, Lingrang Kong and Xin Ma    
Wheat powdery mildew is a fungal disorder caused by Blumeria graminis f. sp. tritici (Bgt) and is a severe and significant threat to the yield and quality of its host. The most practical and environmentally friendly approach to controlling this disease i... ver más
Revista: Agronomy

 
Qi Zhang, Aixia Zhang, Le Yang, Jinpeng Wei, Jinlong Bei, Zhenjiang Xu, Xiaofeng Wang and Bingxian Chen    
Seed germination requires the relaxation of endosperm cap and radicle cell walls, with cell wall hydrolases playing a significant role in this process. Our study revealed that a type of cell wall hydrolase, xyloglucan endotransglucosylase, may significan... ver más
Revista: Agronomy

 
Pongsakorn Sunvittayakul, Passorn Wonnapinij, Pornchanan Chanchay, Pitchaporn Wannitikul, Sukhita Sathitnaitham, Phongnapha Phanthanong, Kanokpoo Changwitchukarn, Anongpat Suttangkakul, Hernan Ceballos, Leonardo D. Gomez, Piya Kittipadakul and Supachai Vuttipongchaikij    
Cassava (Manihot esculenta Crantz) is a key industrial crop in Southeast Asia and a staple for food security in Africa, owing to its resilience and efficiency in starch production. This study aims to unravel the genetic determinants of specific cassava r... ver más
Revista: Agronomy

 
Tengteng Qu, Yaoyu Li, Qixin Zhao, Yunzhen Yin, Yuzhi Wang, Fuzhong Li and Wuping Zhang    
Drone multispectral technology enables the real-time monitoring and analysis of soil moisture across vast agricultural lands. overcoming the time-consuming, labor-intensive, and spatial discontinuity constraints of traditional methods. This study establi... ver más
Revista: Agriculture

 
Stefan Krajewski, Jan ?ukovskis, Dariusz Gozdowski, Marek Cieslinski and Elzbieta Wójcik-Gront    
This study comprehensively analyzed the dynamic landscape of organic farming in the European Union (EU) from 2004 to 2021, investigating the shifts in dedicated agricultural areas influenced by evolving preferences and the priorities of farmers and consu... ver más
Revista: Agriculture