A hyperspectral band selection method based on sparse band attention network for maize seed variety identification
文献类型: 外文期刊
第一作者: Zhang, Liu
作者: Zhang, Liu;Wei, Yaoguang;Liu, Jincun;An, Dong;Zhang, Liu;Wei, Yaoguang;Liu, Jincun;An, Dong;Zhang, Liu;Wei, Yaoguang;Liu, Jincun;An, Dong;Zhang, Liu;Wei, Yaoguang;Liu, Jincun;An, Dong;Wu, Jianwei;Wu, Jianwei
作者机构:
关键词: Hyperspectral imaging; Band selection; Attention mechanism; Deep learning; Seed variety identification
期刊名称:EXPERT SYSTEMS WITH APPLICATIONS ( 影响因子:8.5; 五年影响因子:8.3 )
ISSN: 0957-4174
年卷期: 2024 年 238 卷
页码:
收录情况: SCI
摘要: The development of a real-time online system for rapid and nondestructive identification of seed varieties can greatly improve production efficiency in modern agriculture. Hyperspectral imaging (HSI) is a powerful tool for seed variety identification. Nevertheless, hyperspectral data are not only high in dimensionality but also contain redundant information, which is very unfriendly to real-time online applications. Selecting a few representative bands from the entire working spectral region can significantly reduce the equipment cost and computational load of HSI. In the field of food and agr-products quality evaluation, Band selection (BS) methods based on chemometrics have been dominant for a long time. Most of these methods, however, fail to take full account of the nonlinearities and global interactions between spectral bands, which may result in the selection of some adjacent bands that still retain more redundant information. In this paper, a novel BS network is proposed, which is composed of sparse band attention module and classification net module. The former is used to generate weight of each band, and sparse constraint is applied to the weights of redundant bands, while the latter is used to achieve high-performance classification with reweighted data. Furthermore, to solve the problem of gradient updating caused by sparse constraint, a auxiliary loss function is defined to assist optimization. Finally, comparative experiments is conducted on our maize seed hyperspectral dataset. The results demonstrate that the presented method selects a subset of informative bands with less redundant information to obtain better clas-sification performance and outperforms several other existing BS methods.
分类号:
- 相关文献
作者其他论文 更多>>
-
Computer Vision-Based Measurement Techniques for Livestock Body Dimension and Weight: A Review
作者:Ma, Weihong;Qi, Xiangyu;Sun, Yi;Gao, Ronghua;Ding, Luyu;Wang, Rong;Peng, Cheng;Zhang, Jun;Wu, Jianwei;Xu, Zhankang;Li, Mingyu;Huang, Shudong;Li, Qifeng;Qi, Xiangyu;Zhao, Hongyan;Huang, Shudong
关键词:3D reconstruction; stressless body dimension measurement; visual weight estimation; precision livestock farming
-
Maize seed fraud detection based on hyperspectral imaging and one-class learning
作者:Zhang, Liu;Wei, Yaoguang;Liu, Jincun;An, Dong;Zhang, Liu;Wei, Yaoguang;Liu, Jincun;An, Dong;Zhang, Liu;Wei, Yaoguang;Liu, Jincun;An, Dong;Zhang, Liu;Wei, Yaoguang;Liu, Jincun;An, Dong;Wu, Jianwei;Wu, Jianwei
关键词:Fraud detection; Maize seeds; Hyperspectral imaging; One -class learning; Deep learning
-
Behavior analysis of juvenile steelhead trout under blue and red light color conditions based on multiple object tracking
作者:Li, Ziyu;Huang, Jinze;An, Dong;Li, Ziyu;Huang, Jinze;An, Dong;Li, Ziyu;Huang, Jinze;An, Dong;Li, Ziyu;Huang, Jinze;An, Dong;Chen, Xueweijie;Zhou, Yangen
关键词:steelhead trout; fish behavior; behavior quantify; aquaculture environment regulation; light color
-
The effect of heat moisture treatment times on physicochemical and digestibility properties of adzuki bean, pea, and white kidney bean flours and starches
作者:Li, Shaohui;Li, Pengliang;Zhao, Wei;Zhang, Aixia;Liu, Jingke;Zhang, Liu;Sheng, Qinghai
关键词:Heat moisture treatment; Beans; Physicochemical properties; Digestibility
-
The Effects of Resveratrol and Apigenin on Jejunal Oxidative Injury in Ducks and on Immortalized Duck Intestinal Epithelial Cells Exposed to H2O2
作者:Zhou, Ning;Luo, Youwen;Wang, Lihua;Di, Heshuang;Cao, Yun;Zhu, Jianping;An, Dong;Ma, Yue;Lu, Lizhi;Zhou, Ning;Lu, Lizhi;Cao, Yongqing;Li, Ruiqing;Gu, Tiantian;Zeng, Tao;Chen, Li;Xu, Wenwu;Tian, Yong;Lu, Lizhi
关键词:resveratrol; apigenin; oxidative stress; jejunum; duck; intestinal epithelial cell
-
Maize seed variety identification using hyperspectral imaging and self-supervised learning: A two-stage training approach without spectral preprocessing
作者:Zhang, Liu;Zhang, Shubin;Liu, Jincun;Wei, Yaoguang;An, Dong;Zhang, Liu;Zhang, Shubin;Liu, Jincun;Wei, Yaoguang;An, Dong;Zhang, Liu;Zhang, Shubin;Liu, Jincun;Wei, Yaoguang;An, Dong;Zhang, Liu;Zhang, Shubin;Liu, Jincun;Wei, Yaoguang;An, Dong;Wu, Jianwei;Wu, Jianwei
关键词:Seed classification; Hyperspectral imaging; Self-supervised learning; Deep learning; Spectral analysis
-
Using filter pruning-based deep learning algorithm for the real-time fruit freshness detection with edge processors
作者:Mao, DianHui;Zhang, DengHui;Sun, Hao;Mao, DianHui;Wu, JianWei;Wu, JianWei;Chen, JunHua
关键词:PP-YOLO Tiny; Ultra Lightweight; FPGM algorithm; Real-time detection; Fruit