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基于TPSAO-AMWNet的辣椒叶部病害识别

Identification of Pepper Leaf Diseases Based on TPSAO-AMWNet.

作者信息

Wan Li, Zhu Wenke, Dai Yixi, Zhou Guoxiong, Chen Guiyun, Jiang Yichu, Zhu Ming'e, He Mingfang

机构信息

College of Electronic Information & Physics, Central South University of Forestry and Technology, Changsha 410004, China.

College of Bangor, Central South University of Forestry and Technology, Changsha 410004, China.

出版信息

Plants (Basel). 2024 Jun 6;13(11):1581. doi: 10.3390/plants13111581.

Abstract

Pepper is a high-economic-value agricultural crop that faces diverse disease challenges such as blight and anthracnose. These diseases not only reduce the yield of pepper but, in severe cases, can also cause significant economic losses and threaten food security. The timely and accurate identification of pepper diseases is crucial. Image recognition technology plays a key role in this aspect by automating and efficiently identifying pepper diseases, helping agricultural workers to adopt and implement effective control strategies, alleviating the impact of diseases, and being of great importance for improving agricultural production efficiency and promoting sustainable agricultural development. In response to issues such as edge-blurring and the extraction of minute features in pepper disease image recognition, as well as the difficulty in determining the optimal learning rate during the training process of traditional pepper disease identification networks, a new pepper disease recognition model based on the TPSAO-AMWNet is proposed. First, an Adaptive Residual Pyramid Convolution (ARPC) structure combined with a Squeeze-and-Excitation (SE) module is proposed to solve the problem of edge-blurring by utilizing adaptivity and channel attention; secondly, to address the issue of micro-feature extraction, Minor Triplet Disease Focus Attention (MTDFA) is proposed to enhance the capture of local details of pepper leaf disease features while maintaining attention to global features, reducing interference from irrelevant regions; then, a mixed loss function combining Weighted Focal Loss and L2 regularization (WfrLoss) is introduced to refine the learning strategy during dataset processing, enhancing the model's performance and generalization capabilities while preventing overfitting. Subsequently, to tackle the challenge of determining the optimal learning rate, the tent particle snow ablation optimizer (TPSAO) is developed to accurately identify the most effective learning rate. The TPSAO-AMWNet model, trained on our custom datasets, is evaluated against other existing methods. The model attains an average accuracy of 93.52% and an F1 score of 93.15%, demonstrating robust effectiveness and practicality in classifying pepper diseases. These results also offer valuable insights for disease detection in various other crops.

摘要

辣椒是一种具有高经济价值的农作物,面临着多种病害挑战,如疫病和炭疽病。这些病害不仅会降低辣椒产量,严重时还会造成重大经济损失并威胁粮食安全。及时、准确地识别辣椒病害至关重要。图像识别技术在这方面发挥着关键作用,它能够自动且高效地识别辣椒病害,帮助农业工作者采用并实施有效的防治策略,减轻病害影响,对于提高农业生产效率和促进可持续农业发展具有重要意义。针对辣椒病害图像识别中存在的边缘模糊、微小特征提取以及传统辣椒病害识别网络训练过程中确定最优学习率困难等问题,提出了一种基于TPSAO - AMWNet的新型辣椒病害识别模型。首先,提出了一种结合挤压激励(SE)模块的自适应残差金字塔卷积(ARPC)结构,利用自适应性和通道注意力解决边缘模糊问题;其次,为解决微特征提取问题,提出了微小三元组病害聚焦注意力(MTDFA),在保持对全局特征关注的同时增强对辣椒叶部病害特征局部细节的捕捉,减少无关区域的干扰;然后,引入了一种结合加权焦点损失和L2正则化的混合损失函数(WfrLoss),在数据集处理过程中优化学习策略,提高模型性能和泛化能力,同时防止过拟合。随后,为应对确定最优学习率的挑战,开发了帐篷粒子雪消融优化器(TPSAO)以准确识别最有效的学习率。在我们的自定义数据集上训练的TPSAO - AMWNet模型与其他现有方法进行了评估比较。该模型平均准确率达到93.52%,F1分数为93.15%,在辣椒病害分类中显示出强大的有效性和实用性。这些结果也为其他各种作物的病害检测提供了有价值的见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d581/11174783/1da499f60db1/plants-13-01581-g001.jpg

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