基于自适应特征融合改进AlexNet的水稻磷素营养诊断

    Phosphorus nutrition diagnosis of rice using an improved AlexNet based on the adaptive feature fusion

    • 摘要:
      目的 对水稻Oryza sativa L.磷素营养状况进行精确、高效地诊断识别,提升水稻的产量及品质。
      方法 提出了一种基于自适应特征融合改进AlexNet的水稻磷素营养诊断方法。该方法以AlexNet为基础主干网络模型,首先,引入迁移学习策略,将在ImageNet图像数据集上获得的预训练权重迁移至基础网络中,以增强初始网络性能;同时,在网络4个特征提取阶段的每一个阶段分别引入1个残差模块和1个Inception模块,用于增强深层局部特征提取和多尺度特征表达能力;最后,引入自适应特征融合机制,对不同阶段提取的特征进行权重调节和有效整合,提升模型对关键磷素营养信息的感知能力。
      结果 改进后的AlexNet网络在水稻分蘖期和拔节期的识别准确率分别达到94.81%和86.35%,比改进前的AlexNet网络分别提升了7.44和20.77个百分点;与AlexNet、GhostNet、ResNet34网络模型进行对比,改进后的AlexNet网络模型在分蘖期的识别精确率、召回率分别达到94.86%和94.81%,拔节期为86.30%和86.35%,整体识别性能均优于对比模型。在植物病害公共数据集Plant Village上,改进后的AlexNet网络模型也达到优异的效果,识别准确率达到99.24%,精确率和召回率分别为99.25%和99.24%,进一步验证了模型的有效性和泛化能力。
      结论 本研究所构建的水稻磷素营养诊断模型能够更准确、高效地诊断水稻磷元素缺乏程度,为水稻科学施肥提供理论支持,同时也为其他农作物的病害诊断识别提供有力的科学参考。

       

      Abstract:
      Objective To diagnose the phosphorus (P) nutritional status of rice (Oryza sativa L.) more accurately and efficiently, and improve rice yield and quality.
      Method A phosphorus nutrition diagnosis method for rice was proposed based on an improved AlexNet model enhanced with adaptive feature fusion. The AlexNet was used as the backbone network. First, a transfer learning strategy was adopted by initializing the base network with pre-trained weights obtained from the ImageNet dataset, thereby enhancing initial feature representation capability. Additionally, a residual module and an Inception module were embedded into each of the four feature extraction stages to improve deep local feature learning and multi-scale feature representation. Finally, an adaptive feature fusion mechanism was introduced to dynamically weight and effectively integrate features from different layers, enhancing the model sensitivity to key phosphorus-related information.
      Result The improved AlexNet model achieved the classification accuracies of 94.81% and 86.35% at the tillering and jointing stages of rice respectively, representing improvements of 7.44 and 20.77 percentage points compared to the original AlexNet. Compared with AlexNet, GhostNet, and ResNet34, the improved AlexNet model demonstrated superior performance with the precision of 94.86% and the recall of 94.81% at the tillering stage, while at the jointing stage, the precision and recall were 86.30% and 86.35% respectively. On the public Plant Village dataset for plant disease classification, the improved AlexNet model also achieved excellent performance, with the accuracy of 99.24%, the precision of 99.25%, and the recall of 99.24%, which demonstrated its effectiveness and generalization capability.
      Conclusion This improved AlexNet model enables precise and efficient diagnosis of phosphorus deficiency in rice, thereby providing a theoretical support for scientific fertilization of rice. Furthermore, the model serves as a robust scientific reference for disease status diagnosis in other crops.

       

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