TY - JOUR
T1 - 基于改进 EfficientNet 的轻量化小麦不完善粒识别模型
AU - Yu, Jinlong
AU - Yu, Junwei
AU - Zhang, Zihao
AU - Pan, Quan
AU - Mu, Yashuang
N1 - Publisher Copyright:
© 2025 Editorial Department, Chinese Cereals and Oils Association. All rights reserved.
PY - 2025/2
Y1 - 2025/2
N2 - To address the problems of high complexity and difficult deployment of existing recognition models for imperfect wheat grains based on convolutional neural networks,a lightweight imperfect wheat grain recognition model ML − EfficientNet based on the improved EfficientNet − B0 was proposed. Firstly,a lightweight attention module LCSA was proposed by improving the CBAM attention module and replacing the SE module in the original network with the LCSA module,so that the model could obtain both channel information and spatial information to enhance the modelś recognition ability. Then,the structure of MBConv was adjusted by drawing on the CSPnet idea to realize the purpose of improving themodelś recognition accuracy while reducing the number of model parameters. Finally,the LCSA module was added after the first convolutional layer of the model to enhance the feature extraction capability of the model. The experimental results indicated that the recognition accuracy of the ML − EfficientNet model was 95. 71%,the number of parameters was 2. 863 M,and the floating point computation was 0. 376 G. Compared with the pre − improvement model,the recognition accuracy was improved by 1. 57 percentage points,the amount of parameters was reduced by 60%,and the amount of floating − point computation was reduced by 9%,effectively carrying out the recognition task of imperfect wheat grains and provided useful support for smart agriculture.
AB - To address the problems of high complexity and difficult deployment of existing recognition models for imperfect wheat grains based on convolutional neural networks,a lightweight imperfect wheat grain recognition model ML − EfficientNet based on the improved EfficientNet − B0 was proposed. Firstly,a lightweight attention module LCSA was proposed by improving the CBAM attention module and replacing the SE module in the original network with the LCSA module,so that the model could obtain both channel information and spatial information to enhance the modelś recognition ability. Then,the structure of MBConv was adjusted by drawing on the CSPnet idea to realize the purpose of improving themodelś recognition accuracy while reducing the number of model parameters. Finally,the LCSA module was added after the first convolutional layer of the model to enhance the feature extraction capability of the model. The experimental results indicated that the recognition accuracy of the ML − EfficientNet model was 95. 71%,the number of parameters was 2. 863 M,and the floating point computation was 0. 376 G. Compared with the pre − improvement model,the recognition accuracy was improved by 1. 57 percentage points,the amount of parameters was reduced by 60%,and the amount of floating − point computation was reduced by 9%,effectively carrying out the recognition task of imperfect wheat grains and provided useful support for smart agriculture.
KW - attention mechanism
KW - EfficientNet − B0
KW - imperfect wheat grain recognition
KW - lightweight
UR - http://www.scopus.com/inward/record.url?scp=105001186045&partnerID=8YFLogxK
U2 - 10.20048/j.cnki.issn.1003-0174.000948
DO - 10.20048/j.cnki.issn.1003-0174.000948
M3 - 文章
AN - SCOPUS:105001186045
SN - 1003-0174
VL - 40
SP - 192
EP - 202
JO - Journal of the Chinese Cereals and Oils Association
JF - Journal of the Chinese Cereals and Oils Association
IS - 2
ER -