苹果叶面病害分类的CNN-LSTM学习方法

Ahmed Abba Haruna, I. Badi, L. J. Muhammad, Albaraa Abuobieda, Abdulaziz Altamimi
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引用次数: 2

摘要

深度学习技术是一种高效的人工智能技术,被用于开发苹果叶片病害和其他植物病害的自主特征提取、分类和分割模型。然而,大多数深度学习系统,如卷积神经网络(CNN)和长短期记忆(LSTM),需要大量的训练数据,并受到诸如膨胀梯度、过拟合和类不平衡等问题的困扰。本文提出CNN-LSTM深度学习算法,分别解决CNN和LSTM面临的挑战。本研究使用CNN-LSTM深度学习算法,开发了一个用于苹果叶片病害分类的学习模型。为了创建基于准确性、特异性、敏感性和AUC标准性能评估技术的学习分类模型,我们同时使用了CNN和LSTM算法。CNN-LSTM在准确率、特异性、灵敏度和AUC标准性能评价方法上均为最佳模型,分别为98.00%、95.00%、96.00%和94.00%。因此,与其他模型相比,该模型能够以98.00%的准确率正确地将苹果叶片分为患病/s的患病叶片和未患病/s的未患病叶片。同样,在对受疾病影响的苹果叶片进行分类的能力方面,CNN-LSTM也以95.00%的准确率优于其他模型。此外,与其他模型相比,基于CNN-LSTM的模型也有了显著的改进,对未受病害/s影响的苹果叶片的分类正确率达到96.00%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CNN-LSTM Learning Approach for Classification of Foliar Disease of Apple
Deep learning techniques haven been the efficient artificial intelligence techniques that is being used for developing models for autonomous feature extraction, classification and segmentation of the apple leaves diseases sand other plant diseases. However, most deep learning systems, such as Convolutional neural networks (CNN) and Long Short-term Memory (LSTM), necessitate a huge quantity of training data and are plagued by issues such as inflating gradients, overfitting, and class imbalance, among others. In this work, CNN-LSTM deep learning algorithm was proposed to address the challenges facing CNN and LSTM respectively. This work used the CNN-LSTM deep learning algorithm to develop a learning model for classification of foliar disease of apple leaves. In order to create learning classification models based on accuracy, specificity, sensitivity, and AUC standard performance evaluation techniques, both CNN and LSTM algorithms were employed. CNN-LSTM happened to be the best model in terms of accuracy, specificity, sensitivity, and AUC standard performance evaluation methodologies, with 98.00%,95.00%, 96.00parcent, and 94.00% respectively. Hence, the model has shown a significant improvement as compared to other models for being able to correctly classified apple leaves into affected leaves with disease/s and non-affected leaves with disease/s with 98.00% accuracy. Likewise, for the ability to classify the apple leaves affected with disease/s, correctly CNN-LSTM also outperformed other models with 95.00parcent. Moreover, CNN-LSTM based model also has shown a significant improvement as compared other models, for being able to correctly classified apple leaves that were not affected with disease/s with 96.00%.
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