ID | 118869 |
著者 |
Ni, Hongjun
Nantong University
Shi, Zhiwei
Nantong University
Lv, Shuaishuai
Nantong University
Li, Xiaoyuan
Nantong University
Wang, Xingxing
Nantong University
Zhang, Jiaqiao
Southeast University
|
キーワード | rice
pest and disease classification
ECA
attention mechanism
deep learning
|
資料タイプ |
学術雑誌論文
|
抄録 | Rice, a staple food crop worldwide, is pivotal in agricultural productivity and public health. Automatic classification of typical rice pests and diseases is crucial for optimizing rice yield and quality in practical production. However, infrequent occurrences of specific pests and diseases lead to uneven dataset samples and similar early-stage symptoms, posing challenges for effective identification methods. In this study, we employ four image enhancement techniques—flipping, modifying saturation, modifying contrast, and adding blur—to balance dataset samples throughout the classification process. Simultaneously, we enhance the basic RepVGG model by incorporating the ECA attention mechanism within the Block and after the Head, resulting in the proposal of a new classification model, RepVGG_ECA. The model successfully classifies six categories: five types of typical pests and diseases, along with healthy rice plants, achieving a classification accuracy of 97.06%, outperforming ResNet34, ResNeXt50, Shufflenet V2, and the basic RepVGG by 1.85%, 1.18%, 3.39%, and 1.09%, respectively. Furthermore, the ablation study demonstrates that optimal classification results are attained by integrating the ECA attention mechanism after the Head and within the Block of RepVGG. As a result, the classification method presented in this study provides a valuable reference for identifying typical rice pests and diseases.
|
掲載誌名 |
Agriculture
|
ISSN | 20770472
|
出版者 | MDPI
|
巻 | 13
|
号 | 5
|
開始ページ | 1066
|
発行日 | 2023-05-16
|
権利情報 | This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
|
EDB ID | |
出版社版DOI | |
出版社版URL | |
フルテキストファイル | |
言語 |
eng
|
著者版フラグ |
出版社版
|
部局 |
理工学系
|