Forest pest identification based on a new dataset and convolutional neural network model with enhancement strategy

COMPUTERS AND ELECTRONICS IN AGRICULTURE(2022)

引用 16|浏览27
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摘要
Due to the lack of samples, deep learning in forest pest identification is severely limited, and classification accuracy and generalization ability are insufficient. To address this issue, we have constructed a new dataset of forest pests containing 67,953 images, enhanced the dataset by Graph-based Visual Saliency, and combined transfer learning and fine-tune to build a twice transfer strategy in the convolutional neural networks (CNNs) for pest recognition. Based on the new dataset and developed model, a new platform for forest pest identification was finally built. Compared with prevalent models including Inception-V3, MobileNet-V2, ResNet-50-V2, InceptionResNet-V2, and Xception, our method improves the accuracy and generalization ability of classification by 6.2% and 7.0%, respectively. Meanwhile, class activation maps show that the model's focus on the target has also been increased by 9.0%. In general, the new proposed dataset and training strategy can greatly improve classification performance of CNNs, which may be helpful to the effective control on forest pests.
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关键词
New dataset, Forest pests, Dataset enhancement, Twice transfer strategy, Identification platform
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