An efficient mobile model for insect image classification in the field pest management
文献类型: 外文期刊
第一作者: Zheng, Tengfei
作者: Zheng, Tengfei;Yang, Xinting;Zheng, Tengfei;Yang, Xinting;Lv, Jiawei;Li, Ming;Li, Wenyong;Zheng, Tengfei;Yang, Xinting;Lv, Jiawei;Li, Ming;Li, Wenyong;Wang, Shanning;Lv, Jiawei
作者机构:
关键词: Insect recognition; Lightweight model; Attention mechanism; Feature fusion; Data augmentation
期刊名称:ENGINEERING SCIENCE AND TECHNOLOGY-AN INTERNATIONAL JOURNAL-JESTECH ( 影响因子:5.7; 五年影响因子:5.7 )
ISSN: 2215-0986
年卷期: 2023 年 39 卷
页码:
收录情况: SCI
摘要: Accurately recognizing insect pest in their larva phase is significant to take the early treatment on the infected crops, thus helping timely reduce the yield loss in agricultural products. The convolutional neu-ral networks (CNNs)-based classification methods have become the most competitive methods to address many technical challenges related to image recognition in the field. Focusing on accurate and small mod-els carried on mobile devices, this study proposed a novel pest classification method PCNet (Pest Classification Network) based on lightweight CNNs embedded attention mechanism. PCNet was designed with EfficientNet V2 as the backbone, and the coordinate attention mechanism (CA) was incorporated in this architecture to learn the inter-channel pest information and pest positional information of input images. Moreover, combining the feature maps output by mobile inverted bottleneck (MBConv) with the feature maps output by average pooling to develop the feature fusion module, which implements the feature fusion between shallow layers and deep layers to address the loss of insect pest features in the down-sampling procedures. In addition, a stochastic, pipeline-based data augmentation approach was adopted to randomly enhance data diversity and thus avoid model overfitting. The experimental results show that the PCNet model achieved recognition accuracy of 98.4 % on the self-built dataset con-sisting of 30 classes of larvae, which outperforms three classic CNN models (AlexNet, VGG16, and ResNet101), and four lightweight CNN models (ShuffleNet V2, MobileNet V3, EfficientNet V1 and V2). To further verify the robustness on different datasets, the proposed model was also tested on two other public datasets: IP102 and miniImageNet. The recognition accuracy of PCNet is 73.7 % on the IP102 data -set, outperforming other models and 94.0 % on miniImageNet dataset, which is only lower than that of ResNet101 and MobileNet V3. The number of PCNet parameters is 20.7 M, which is less than those of tra-ditional classic CNN models. The satisfactory accuracy and small size of this model makes it suitable for real-time pest recognition in the field with resource constrained mobile devices. Our code will be avail-able at https://github.com/pby521/PCNet/tree/master. (c) 2023 Karabuk University. Publishing services by Elsevier B.V. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
分类号:
- 相关文献
作者其他论文 更多>>
-
Effect of crowding stress on liver health, gut permeability and gut microbiota of genetically improved farmed tilapia (GIFT, Oreochromis niloticus)
作者:Zhang, Jian;Chen, Jie;Liang, Hui;Li, Ming;Zhou, Wenhao;Zhou, Zhigang;Yang, Yalin;Zhang, Zhen;Ran, Chao;Ding, Qianwen
关键词:Crowing stress; Apoptosis; Gut permeability; Gut microbiota; GIFT
-
The shape of reactive nitrogen losses from intensive farmland in China
作者:Zhan, Xiaoying;Zhang, Qingwen;Li, Ming;Hou, Xikang;Shang, Ziyin;Liu, Zhen;He, Yaping
关键词:Reactive nitrogen loss; Environmental damage cost; Pollution swapping; Sustainable N management
-
A 5.2-kb insertion in the coding sequence of PavSCPL, a serine carboxypeptidase-like enhances fruit firmness in Prunus avium
作者:Qi, Xiliang;Dong, Yuanxin;Liu, Congli;Song, Lulu;Chen, Lei;Li, Ming;Liu, Congli
关键词:sweet cherry; fruit firmness; BSA-seq; PavSCPL; molecular marker
-
Temporal Dynamics and Dispersal Patterns of the Primary Inoculum of Coniella diplodiella, the Causal Agent of Grape White Rot
作者:Ji, Tao;Ji, Tao;Languasco, Luca;Salotti, Irene;Rossi, Vittorio;Li, Ming
关键词:Bayesian analysis; conidial dispersal; mathematical equations; primary inoculum; production dynamics
-
Effects of drought stress on the functional traits and rhizosphere microbial community structure of Cyperus esculentus
作者:Liu, Binshuo;Hu, Yunhang;Li, Ming;Xue, Honghai;Wang, Ying;Liu, Binshuo;Li, Ming;Li, Ming;Li, Zhonghe;Wang, Ying
关键词:drought stress; functional trait; plant growth; rhizosphere microorganism
-
Principles and applications of convolutional neural network for spectral analysis in food quality evaluation: A review
作者:Luo, Na;Xu, Daming;Xing, Bin;Yang, Xinting;Sun, Chuanheng;Luo, Na;Xu, Daming;Xing, Bin;Yang, Xinting;Sun, Chuanheng;Luo, Na;Xu, Daming;Xing, Bin;Yang, Xinting;Sun, Chuanheng;Sun, Chuanheng
关键词:Convolutional neural network; Spectroscopic technologies; Evaluation; Food quality
-
Effects of chronic heat stress on growth performance, liver histology, digestive enzyme activities, and expressions of HSP genes in different populations of Largemouth bass (Micropterus salmoides)
作者:Du, Jinxing;Xie, Yujing;Li, Ming;Zhu, Tao;Lei, Caixia;Song, Hongmei;Li, Shengjie;Li, Ming;Han, Linqiang
关键词:Largemouth bass; Chronic heat stress; Liver damage; Digestive enzyme activities; HSP gene expression