Convolutional neural network in rice disease recognition: accuracy, speed and lightweight

Front Plant Sci. 2023 Nov 1:14:1269371. doi: 10.3389/fpls.2023.1269371. eCollection 2023.

Abstract

There are many rice diseases, which have very serious negative effects on rice growth and final yield. It is very important to identify the categories of rice diseases and control them. In the past, the identification of rice disease types was completely dependent on manual work, which required a high level of human experience. But the method often could not achieve the desired effect, and was difficult to popularize on a large scale. Convolutional neural networks are good at extracting localized features from input data, converting low-level shape and texture features into high-level semantic features. Models trained by convolutional neural network technology based on existing data can extract common features of data and make the framework have generalization ability. Applying ensemble learning or transfer learning techniques to convolutional neural network can further improve the performance of the model. In recent years, convolutional neural network technology has been applied to the automatic recognition of rice diseases, which reduces the manpower burden and ensures the accuracy of recognition. In this paper, the applications of convolutional neural network technology in rice disease recognition are summarized, and the fruitful achievements in rice disease recognition accuracy, speed, and mobile device deployment are described. This paper also elaborates on the lightweighting of convolutional neural networks for real-time applications as well as mobile deployments, and the various improvements in the dataset and model structure to enhance the model recognition performance.

Keywords: convolution operation; convolutional neural network; lightweight; model compression; rice disease.

Publication types

  • Review

Grants and funding

The author(s) declare financial support was received for the research, authorship, and/or publication of this article. This work was funded by the National Natural Science Foundation of China (No. 52075138) and Hainan Province Science and Technology Special Fund (No. ZDYF2022SHFZ301), the Science and Technology Plan Project of Anhui Province (Grant No. 202104f06020019), the Natural Science Foundation for the Higher Education Institutions of Anhui Province (Grant No. 2022AH051631), and the Natural Science General Project of Anhui Science and Technology University (Grant No. 2021zryb26).