Detection of Litchi Leaf Diseases and Insect Pests Based on Improved FCOS

Author:

Xie Jiaxing123,Zhang Xiaowei1,Liu Zeqian1,Liao Fei1,Wang Weixing134,Li Jun25ORCID

Affiliation:

1. College of Electronic Engineering (College of Artificial Intelligence), South China Agricultural University, Guangzhou 510642, China

2. Guangdong Laboratory for Lingnan Modern Agriculture, South China Agricultural University, Guangzhou 510642, China

3. Engineering Research Center for Monit Oring Agricultural Information of Guangdong Province, Guangzhou 510642, China

4. Zhujiang College, South China Agricultural University, Guangzhou 510900, China

5. College of Engineering, South China Agricultural University, Guangzhou 510642, China

Abstract

Litchi leaf diseases and pests can lead to issues such as a decreased Litchi yield, reduced fruit quality, and decreased farmer income. In this study, we aimed to explore a real-time and accurate method for identifying Litchi leaf diseases and pests. We selected three different orchards for field investigation and identified five common Litchi leaf diseases and pests (Litchi leaf mite, Litchi sooty mold, Litchi anthracnose, Mayetiola sp., and Litchi algal spot) as our research objects. Finally, we proposed an improved fully convolutional one-stage object detection (FCOS) network for Litchi leaf disease and pest detection, called FCOS for Litch (FCOS-FL). The proposed method employs G-GhostNet-3.2 as the backbone network to achieve a model that is lightweight. The central moment pooling attention (CMPA) mechanism is introduced to enhance the features of Litchi leaf diseases and pests. In addition, the center sampling and center loss of the model are improved by utilizing the width and height information of the real target, which effectively improves the model’s generalization performance. We propose an improved localization loss function to enhance the localization accuracy of the model in object detection. According to the characteristics of Litchi small target diseases and pests, the network structure was redesigned to improve the detection effect of small targets. FCOS-FL has a detection accuracy of 91.3% (intersection over union (IoU) = 0.5) in the images of five types of Litchi leaf diseases and pests, a detection rate of 62.0/ms, and a model parameter size of 17.65 M. Among them, the detection accuracy of Mayetiola sp. and Litchi algal spot, which are difficult to detect, reached 93.2% and 92%, respectively. The FCOS-FL model can rapidly and accurately detect five common diseases and pests in Litchi leaf. The research outcome is suitable for deployment on embedded devices with limited resources such as mobile terminals, and can contribute to achieving real-time and precise identification of Litchi leaf diseases and pests, providing technical support for Litchi leaf diseases’ and pests’ prevention and control.

Funder

Co-constructing Cooperative Project on Agricultural Sci-tech of New Rural Development Research Institute of South China Agricultural University

China Agriculture Research System of MOF and MARA, China

Guangdong Provincial Special Fund for Modern Agriculture Industry Technology Innovation Teams, China

Laboratory of Lingnan Modern Agriculture Project, China

the Guangdong Science and Technology Innovation Cultivation Special Fund Project for College Students (“Climbing Program” Special Fund), China

Guangdong Province Rural Revitalization Strategy Projects

Publisher

MDPI AG

Subject

Agronomy and Crop Science

Reference43 articles.

1. Status, Trend and Countermeasures of Development of Litchi lndustry in theMainland of China in 2022;Qi;Guangdong Agric. Sci.,2023

2. Litchi (Litchi Chinenis) Seed: Nutritional Profile, Bioactivities, and Its Industrial Applications;Punia;Trends Food Sci. Technol.,2021

3. Development Characteristics and Policy Suggestions of Chinese Litchi Industry in 2019;Zhuang;South China Fruits,2021

4. Identification of Colletotrichum Siamense Causing Litchi Pepper Spot Disease in Mainland China;Ling;Plant Pathol.,2019

5. Deep Learning Models for Plant Disease Detection and Diagnosis;Ferentinos;Comput. Electron. Agric.,2018

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