Crop pest image classification based on improved densely connected convolutional network.

Frontiers in plant science(2023)

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摘要
Experimental results show that MADN achieved an accuracy and F1Score of 75.28% and 65.46% on the HQIP102 data set, an improvement of 5.17 percentage points and 5.20 percentage points compared to the pre-improvement DenseNet-121. Compared with ResNet-101, the accuracy and F1Score of MADN model improved by 10.48 percentage points and 10.56 percentage points, while the parameters size decreased by 35.37%. Deploying models to cloud servers with mobile application provides help in securing crop yield and quality.
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关键词
DenseNet-121,ensemble learning,pest image classification,representative batch normalization,selective kernel unit
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