Author:
Xia Yuxin,Yuan Wenxia,Zhang Shihao,Wang Qiaomei,Liu Xiaohui,Wang Houqiao,Wu Yamin,Yang Chunhua,Xu Jiayi,Li Lei,He Junjie,Cao Zhiyong,Wang Zejun,Zhao Zihua,Wang Baijuan
Abstract
AbstractTo address the issues of low accuracy and slow response speed in tea disease classification and identification, an improved YOLOv7 lightweight model was proposed in this study. The lightweight MobileNeXt was used as the backbone network to reduce computational load and enhance efficiency. Additionally, a dual-layer routing attention mechanism was introduced to enhance the model’s ability to capture crucial details and textures in disease images, thereby improving accuracy. The SIoU loss function was employed to mitigate missed and erroneous judgments, resulting in improved recognition amidst complex image backgrounds.The revised model achieved precision, recall, and average precision of 93.5%, 89.9%, and 92.1%, respectively, representing increases of 4.5%, 1.9%, and 2.6% over the original model. Furthermore, the model’s volum was reduced by 24.69M, the total param was reduced by 12.88M, while detection speed was increased by 24.41 frames per second. This enhanced model efficiently and accurately identifies tea disease types, offering the benefits of lower parameter count and faster detection, thereby establishing a robust foundation for tea disease monitoring and prevention efforts.
Funder
National Natural Science Foundation
Development and demonstration of intelligent agricultural data sensing technology and equipment in plateau mountainous areas
The Yunnan Menghai County Smart Tea Industry Science and Technology Mission
Publisher
Springer Science and Business Media LLC
Cited by
1 articles.
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