Affiliation:
1. Institute of Quality Standard and Monitoring Technology for Agro‐Products of Guangdong Academy of Agricultural Sciences Guangzhou Guangdong China
2. Guangdong Provincial Key Laboratory of Quality & Safety Risk Assessment for Agro‐Products Guangzhou Guangdong China
3. Key Laboratory of Testing and Evaluation for Agro‐Product Safety and Quality of Ministry of Agriculture and Rural Affairs of the People's Republic of China Guangzhou Guangdong China
Abstract
AbstractInsects have flourished in various ecosystems owing to their evolutionary prowess. However, certain behaviours have led specific species to be classified as pests in human‐dominated settings. Ensuring accurate pest identification and assessing risks are vital for both agricultural productivity and effective pest control. While traditional methods, based on manual checks and expert opinions, tend to be time‐consuming and error‐prone, machine learning (ML)—a branch of artificial intelligence—has brought groundbreaking shifts in computer vision and predictive analytics, paving the way for advanced agricultural methods. This study delves into a bibliometric analysis of the confluence between ML and pest control from 1999 to 2022. Drawing data from 2348 publications in the Web of Science (WoS) databases, we identified a marked uptick in interest after 2017—a decade marked by a 40‐fold growth in publication numbers. An examination of 706 WoS core articles offered insights into temporal and geographic trends, co‐citation patterns, key publications, and recurring keywords. Also, we spotlight major ML techniques employed in pest management and hint at promising directions for subsequent research. Overall, this paper serves as an exhaustive resource for individuals intrigued by the intersection of computer science and agriculture.
Funder
National Natural Science Foundation of China
Cited by
1 articles.
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