The Bayesian mixture expert recognition model for tobacco leaf curing stages based on feature fusion
文献类型: 外文期刊
第一作者: Zhao, Panzhen
作者: Zhao, Panzhen;Wang, Songfeng;Wang, Aihua;Meng, Lingfeng;Wang, Zhicheng;Dai, Yingpeng;Duan, Shijiang;Zhao, Panzhen;Wang, Zhicheng
作者机构:
关键词: Curing stage; Feature fusion; Bayesian optimization; Image classification; Ensemble learning
期刊名称:PLANT METHODS ( 影响因子:4.4; 五年影响因子:5.7 )
ISSN:
年卷期: 2025 年 21 卷 1 期
页码:
收录情况: SCI
摘要: The diverse visual features of tobacco leaves during various curing stages are influenced by multiple factors such as the origin of the tobacco and the environment of the curing room, making precise identification challenging with single features or models. To address this issue, this study proposes a Bayesian Mixture Expert Recognition Model for Tobacco Leaf Curing Stages based on feature fusion. First, deep learning models (ResNet34, MobileNetV2, EfficientNetb0) are utilized to extract deep features and traditional features positively correlated with curing stages from a constructed tobacco leaf image dataset. Various feature fusion methods (concatenate fusion, scaled fusion, adaptive gated fusion) are employed to construct multi-level feature representations. Next, different feature fusion methods of the same model are optimized to select the best-performing model as the foundational model for ensemble learning. Finally, Bayesian optimization is applied to integrate three optimized models, and comparisons are made with voting and weighted averaging methods. The proposed model achieves a recognition accuracy of 93.96% on the test set, with other performance metrics surpassing those of the base models. This research efficiently captures and robustly recognizes the complex dynamic visual features of the tobacco curing process through the integration of diverse features, adaptive adjustments, and expert collaboration mechanisms, thereby enhancing the system's adaptability and interpretability in complex environments. This provides strong support for the intelligent upgrading of the tobacco industry.
分类号:
- 相关文献
作者其他论文 更多>>
-
Lightweight multi-scale feature dense cascade neural network for scene understanding of intelligent autonomous platform
作者:Dai, Yingpeng;Meng, Lingfeng;Sun, Fushan;Wang, Songfeng
关键词:Lightweight neural network; Semantic segmentation; Classification; Autonomous platform
-
A multiple resolution branch attention neural network for scene understanding of intelligent autonomous platform
作者:Dai, Yingpeng;Meng, Lingfeng;Ren, Jie;Wang, Yutan
关键词:Information exchange; Lightweight neural network; Multiple resolution branch attention; Semantic segmentation; Unmanned platform
-
An ensemble multi-dimensional randomization network for intelligent recognition of tobacco baking stage
作者:Zhao, Panzhen;Wang, Songfeng;Ren, Jie;Dai, Yingpeng;Zhao, Panzhen;Hao, Xianwei;Wang, Zhisheng;Zou, Jun
关键词:Image processing; Randomization network; Crop baking; Agricultural intelligent platform; Classification
-
A novel dual-branch spatial-spectral attention fusion model and method: A case study for the detection of nicotine content in tobacco leaves
作者:Xing, Fukang;Zhu, Rongguang;Wang, Shichang;Meng, Lingfeng;Dong, Fujia;Bai, Zongxiu;Kang, Yapeng;Xing, Fukang;Zhu, Rongguang;Wang, Shichang;Meng, Lingfeng;Dong, Fujia;Bai, Zongxiu;Kang, Yapeng;Xing, Fukang;Zhu, Rongguang;Wang, Shichang;Meng, Lingfeng;Dong, Fujia;Bai, Zongxiu;Kang, Yapeng;Meng, Lingfeng;Wang, Songfeng;Ren, Jie
关键词:Information fusion; Nicotine; Hyperspectral imaging; Attention mechanism; Transformer
-
Mannan-Rich Fraction Supplementation: A Promising Nutritional Strategy for Optimizing Growth and Health of Pre-Weaning Calves
作者:Guo, Shanshan;Feng, Yanfei;Yang, Jianhao;Zhao, Haomiao;Zhang, Yuan;Sun, Mengkun;Li, Yifan;Lin, Pengfei;Wang, Aihua;Jin, Yaping;Guo, Shanshan;Feng, Yanfei;Yang, Jianhao;Zhao, Haomiao;Zhang, Yuan;Sun, Mengkun;Li, Yifan;Lin, Pengfei;Wang, Aihua;Jin, Yaping;Ma, Jiajun;Lin, Gang
关键词:MRF; calves; growth performance; gut health; immunity
-
Sliding-window enhanced olfactory visual images combined with deep learning to predict TVB-N content in chilled mutton
作者:Wang, Shichang;Zhang, Yixin;Zhu, Rongguang;Xing, Fukang;Yan, Jiufu;Yao, Xuedong;Zhu, Rongguang;Yao, Xuedong;Meng, Lingfeng
关键词:Olfactory visualization; Mutton; Total volatile basic nitrogen; Data enhancement; Deep learning
-
RNA sequencing analysis reveals key genes and pathways associated with feather pigmentation in mule ducks
作者:Wang, Yifei;Zhu, Chunhong;Wang, Zhicheng;Song, Weitao;Tao, Zhiyun;Xu, Wenjuan;Zhang, Shuangjie;Liu, Hongxiang;Li, Huifang;Wang, Yifei;Zhu, Chunhong;Wang, Zhicheng;Song, Weitao;Tao, Zhiyun;Xu, Wenjuan;Zhang, Shuangjie;Liu, Hongxiang;Li, Huifang;Lu, Lizhi;Zhou, Wei
关键词:DEGs; melanogenesis; mule duck; RNA-seq; WGCNA