基于CNN的植物病害识别研究

Xuewei Sun , Guohou Li , Peixin Qu , Xiwang Xie , Xipeng Pan , Weidong Zhang
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引用次数: 0

摘要

传统的数字图像处理方法手工提取疾病特征,效率低,识别精度低。为了解决这一问题,本文提出了一种卷积神经网络架构FL-EfficientNet (Focal loss EfficientNet),用于植物病害图像的多类别识别。首先,通过神经结构搜索技术,根据一组复合系数自适应调整网络宽度、网络深度和图像分辨率,提高网络维度的平衡性和模型的稳定性;其次,通过引入运动翻转瓶颈卷积和注意机制,提取疾病图像中有价值的特征;最后,用Focal loss函数代替传统的Cross-Entropy loss函数,提高网络模型对不易识别的样本的聚焦能力。实验采用公共数据集新植物病害数据集(NPDD),并与ResNet50、DenseNet169和EfficientNet进行比较。实验结果表明,fl - effentnet对5种作物10种病害的识别准确率为99.72%,优于上述对比网络。同时,fl - effentnet的收敛速度最快,15次epoch的训练时间为4.7 h。
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Research on plant disease identification based on CNN

Traditional digital image processing methods extract disease features manually, which have low efficiency and low recognition accuracy. To solve this problem, In this paper, we propose a convolutional neural network architecture FL-EfficientNet (Focal loss EfficientNet), which is used for multi-category identification of plant disease images. Firstly, through the Neural Architecture Search technology, the network width, network depth, and image resolution are adaptively adjusted according to a group of composite coefficients, to improve the balance of network dimension and model stability; Secondly, the valuable features in the disease image are extracted by introducing the moving flip bottleneck convolution and attention mechanism; Finally, the Focal loss function is used to replace the traditional Cross-Entropy loss function, to improve the ability of the network model to focus on the samples that are not easy to identify. The experiment uses the public data set new plant diseases dataset (NPDD) and compares it with ResNet50, DenseNet169, and EfficientNet. The experimental results show that the accuracy of FL-EfficientNet in identifying 10 diseases of 5 kinds of crops is 99.72%, which is better than the above comparison network. At the same time, FL-EfficientNet has the fastest convergence speed, and the training time of 15 epochs is 4.7 h.

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