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基于改进EfficientNet模型的烟株生长发育状态识别

Identifying growth and development status of tobacco plants based on a modified EfficientNet model

  • 摘要: 为了智能识别田间烟株的生长发育状态,利用肥料梯度大田实验和烟株全生育期无人机平台数据采集,建立了包含6 029幅不同生长发育阶段和营养状态的烟株生长过程中的图像数据集。在经典图像分类网络EfficientNet-B0基础上,使用高效通道注意力机制(ECA)替代原MBConv中的压缩激励注意力机制(SE),将普通卷积替换为分组卷积并加入通道洗牌策略减少了模型参数量,构建了1种能够快速识别大田烟株生长发育阶段和营养状态的轻量化ES-EfficientNet模型。结果表明:①与原始的EfficientNet-B0模型相比,ES-EfficientNet模型识别准确率提高2.4百分点,参数量降低2.26 MB。②与常用图像分类模型EfficientNet V2、Mobile ViT、MobileNet、ResNet和ShuffleNet相比,ES-EfficientNet模型识别准确率提高0.7~43.8百分点。综合精度与参数量指标,ES-EfficientNet模型的参数量和复杂性降低,能更准确地判别烟株发育阶段和营养状态,可用于田间烟株生长的智能监测。

     

    Abstract: To intelligently identify the growth and development status of tobacco plants in fields, a gradient fertilization field experiment was conducted and an image dataset containing 6 029 images of tobacco plants with different nutritional status throughout the growth and development cycles was generated using a UAV data acquisition platform. Based on the classical image classification network EfficientNet-B0, a lightweight ES-EfficientNet model for rapid identification of tobacco growth stages and nutritional status was developed by replacing the original squeeze-and-excitation (SE) attention mechanism in MBConv with an efficient channel attention (ECA) mechanism, and further by replacing standard convolutions with grouped convolutions, and incorporating a channel shuffle strategy to reduce model parameters. The results showed that: 1) Compared to the original EfficientNet-B0 model, the recognition accuracy of the ES-EfficientNet model increased by 2.4 percentage points and the number of parameters decreased by 2.26 MB. 2) Compared to common image classification models such as EfficientNet V2, Mobile ViT, MobileNet, ResNet and ShuffleNet, the recognition accuracy of the developed model increased by 0.7 to 43.8 percentage points. Considering both accuracy and number of parameters, the ES-EfficientNet model has a reduced number of parameters, less complexity, higher recognition accuracy for growth stages and nutritional status of tobacco plants, and is suitable for intelligent monitoring of tobacco plant growth in fields.

     

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