1. Rice leaf disease detection based on enhanced feature fusion and target adaptation.
- Author
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Li, Zhaoxing, Yang, Kai, Ye, Wei, Wang, Jiaoyu, Qiu, Haiping, Wang, Hongkai, Xu, Zhengguo, and Xie, Dejin
- Subjects
ARTIFICIAL neural networks ,IMAGE recognition (Computer vision) ,FEATURE extraction ,RICE diseases & pests - Abstract
Intelligent rice disease recognition methods based on deep neural networks can predict the degree of disease on the basis of, for example, the number of disease spots on an image, so that preventive measures can be taken. Currently, intelligent recognition methods for rice diseases suffer from the disadvantages of poor versatility and low accuracy. This paper uses eight common image classification networks to classify and identify four rice diseases. ResNet50 was selected as the feature extraction network and an enhanced feature fusion and target adaptive network (EFFTAN), referred to as EFFTAN, is proposed. The EFFTAN was used to detect four rice spot diseases in the rice leaf disease image samples dataset; the mean average precision of the final detection was 95.3%, and effective detection was also achieved for the dense spot features. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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