Affiliation:
1. College of Engineering, China Agricultural University, 17 Qinghua Donglu, Haidian, Beijing 100083, China
Abstract
The potato is a key crop in addressing global hunger, and deep learning is at the core of smart agriculture. Applying deep learning (e.g., YOLO series, ResNet, CNN, LSTM, etc.) in potato production can enhance both yield and economic efficiency. Therefore, researching efficient deep learning models for potato production is of great importance. Common application areas for deep learning in the potato production chain, aimed at improving yield, include pest and disease detection and diagnosis, plant health status monitoring, yield prediction and product quality detection, irrigation strategies, fertilization management, and price forecasting. The main objective of this review is to compile the research progress of deep learning in various processes of potato production and to provide direction for future research. Specifically, this paper categorizes the applications of deep learning in potato production into four types, thereby discussing and introducing the advantages and disadvantages of deep learning in the aforementioned fields, and it discusses future research directions. This paper provides an overview of deep learning and describes its current applications in various stages of the potato production chain.
Funder
National Natural Science Foundation of China
Reference230 articles.
1. Qu, D. (2024, July 18). FAO, Director-General. Role and Potential of Potato in Global Food Security. Available online: https://www.fao.org/3/cc0330en/cc0330en.pdf.
2. The Potato of the Future: Opportunities and Challenges in Sustainable Agri-food Systems;Devaux;Potato Res.,2021
3. Fernández-López, J., Botella-Martínez, C., Navarro-Rodríguez De Vera, C., Sayas-Barberá, M.E., Viuda-Martos, M., Sánchez-Zapata, E., and Pérez-Álvarez, J.A. (2020). Vegetable Soups and Creams: Raw Materials, Processing, Health Benefits, and Innovation Trends. Plants, 9.
4. Applications of Computer Vision on Automatic Potato Plant Disease Detection: A Systematic Literature Review;Sinshaw;Comput. Intell. Neurosci.,2022
5. PLDPNet: End-to-end hybrid deep learning framework for potato leaf disease prediction;Arshad;Alex. Eng. J.,2023