Research Article | Open Access
Volume 2023 |Article ID 0011 | https://doi.org/10.34133/plantphenomics.0011

The Gray Mold Spore Detection of Cucumber Based on Microscopic Image and Deep Learning

Kaiyu Li,1 Xinyi Zhu,1 Chen Qiao,1 Lingxian Zhang ,1,2 Wei Gao,3 and Yong Wang3

1China Agricultural University, Beijing, 100083, China
2Key Laboratory of Agricultural Informationization Standardization, Ministry of Agriculture and Rural Affairs, Beijing, 100083, China
3Tianjin Academy of Agricultural Sciences, Institute of Plant Protection, Tianjin, 300384, China

Received 
05 Sep 2022
Accepted 
17 Nov 2022
Published
10 Jan 2023

Abstract

Rapid and accurate detection of pathogen spores is an important step to achieve early diagnosis of diseases in precision agriculture. Traditional detection methods are time-consuming, laborious, and subjective, and image processing methods mainly rely on manually designed features that are difficult to cope with pathogen spore detection in complex scenes. Therefore, an MG-YOLO detection algorithm (Multi-head self-attention and Ghost-optimized YOLO) is proposed to detect gray mold spores rapidly. Firstly, Multi-head self-attention is introduced in the backbone to capture the global information of the pathogen spores. Secondly, we combine weighted Bidirectional Feature Pyramid Network (BiFPN) to fuse multiscale features of different layers. Then, a lightweight network is used to construct GhostCSP to optimize the neck part. Cucumber gray mold spores are used as the study object. The experimental results show that the improved MG-YOLO model achieves an accuracy of 0.983 for detecting gray mold spores and takes 0.009 s per image, which is significantly better than the state-of-the-art model. The visualization of the detection results shows that MG-YOLO effectively solves the detection of spores in blurred, small targets, multimorphology, and high-density scenes. Meanwhile, compared with the YOLOv5 model, the detection accuracy of the improved model is improved by 6.8%. It can meet the demand for high-precision detection of spores and provides a novel method to enhance the objectivity of pathogen spore detection.

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