Strawberry Disease and Pest Identification and Control Based on SE-ResNeXt50 Model

G. Gan, Xu Xiao, Chuntao Jiang, Yingxi Ye, Yuhao He, Yushen Xu, Chunhai Luo
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引用次数: 1

Abstract

Strawberry disease and pest identification and control were rarely studied, with few high-quality open image datasets to date. In view of this situation, firstly, the images of common strawberry pests and diseases of 13 categories were collected both online and offline independently to be constructed into datasets. Secondly, the SE-ResNeXt50 model was created, which had better usability than the residual network model ResNet50. To be specific, the Inception was combined with the ResNet50 model to widen the network, 32 branches were set, and the attention mechanism, the squeeze and excitation module (SE), was also imported, which solved the problems of the complex image background and information interference and improved the identification efficiency and accuracy of the model. The results showed that the accuracy of the SE-ResNeXt50 model, reaching 89.3%, was 8% higher than that of the ResNet50 model. The SEResNeXt50 model had plateaued after iterating 15 times, indicating its good identification performance. Besides, the SEResNeXt50 model, which was developed based on the data obtained in real life, had good generalization ability and robustness, better meeting the demands of strawberry growers. A WeChat mini-program for strawberry disease and pest identification based on the SE-ResNeXt50 model was developed, enabling the fruit growers to identify the strawberry pests and diseases easily and get prevention suggestions, promoting the development of the strawberry industry.
基于SE-ResNeXt50模型的草莓病虫害鉴定与防治
草莓病虫害的鉴定和防治研究很少,迄今为止几乎没有高质量的开放图像数据集。针对这种情况,首先,对草莓常见病虫害的13类图像进行线上和线下独立采集,构建数据集。其次,建立了SE-ResNeXt50模型,该模型比剩余网络模型ResNet50具有更好的可用性。具体而言,将Inception与ResNet50模型相结合,扩大网络,设置32个分支,并引入注意机制——挤压激励模块(SE),解决了复杂的图像背景和信息干扰问题,提高了模型的识别效率和准确性。结果表明,SE-ResNeXt50模型的准确率达到89.3%,比ResNet50模型提高了8%。SEResNeXt50模型迭代15次后趋于平稳,表明其识别性能良好。此外,SEResNeXt50模型是基于实际生活中获得的数据开发的,具有良好的泛化能力和鲁棒性,更能满足草莓种植者的需求。基于SE-ResNeXt50模型开发了草莓病虫害识别微信小程序,使果农能够轻松识别草莓病虫害并获得防治建议,促进了草莓产业的发展。
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