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基于改进EfficientNetV2-S模型的甘蔗叶片病害识别方法

Sugarcane leaf disease identification method based on improved EfficientNetV2-S model

  • 摘要: 针对甘蔗叶片病害目标小、病害之间颜色特征相近造成特征提取不充分、识别准确率较低的问题,提出一种改进的EfficientNetV2-S模型。首先,使用5×5卷积核替换网络中第12~17层的3×3卷积核,扩大卷积核的感受野,从而提高特征提取能力;其次,在网络的输入端与主干网络之间引入全局注意力机制(GAM),提升模型对病斑区域的关注能力,进一步提高模型的特征提取能力;最后,使用置信度标签平滑算法(CLS)结合损失函数来优化模型。试验结果表明,改进的EfficientNetV2-S模型在测试集上平均精确率99.61%。与基础模型相比,Top-1准确率、平均精确率和F1分数分别增加2.04、1.97和0.87个百分点。改进的EfficientNetV2-S模型在甘蔗叶片病害种类识别任务中表现出色,为甘蔗叶片病害识别提供了有效的技术支持。

     

    Abstract: Addressing problems of insufficient feature extraction and low recognition accuracy caused by small target size and similar color characteristics among diseases in sugarcane leaf diseases, an improved EfficientNetV2-S model has been proposed.Firstly, 5×5 convolutional kernel has been used to replace 3×3 convolution kernels from layers 12 to 17 in network, enlarging receptive field of convolution kernels to improve feature extraction abilities.Secondly, a global attention mechanism(GAM)has been introduced between input end and backbone network to improve model's ability to pay attention to diseased areas, further improving feature extraction ability.Finally, confidence label smoothing(CLS)algorithm has been combined with a loss function to optimize model.Experimental results showed that average accuracy of improved model reached 99.61% on test set.Compared with basic model, Top-1 accuracy, average precision, and F1-score have increased by 2.04, 1.97, and 0.87 percentage points respectively.Improved EfficientNetV2-S model performed well in task of identifying sugarcane leaf diseases, providing effective technical support for sugarcane leaf disease identification.

     

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