RNDDNet:基于残差嵌套扩张密集网络的辣椒植物病害分类深度学习模型

IF 1.5 Q2 ENGINEERING, MULTIDISCIPLINARY
Maramreddy Srinivasulu and Sandipan Maiti
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引用次数: 0

摘要

对食品安全威胁最大的是植物病害,它们会大大降低农产品的产量和质量。识别这些植物病害是农业领域面临的首要挑战。事实证明,卷积和深度神经网络可以有效解决计算机视觉领域的图像分类难题。许多基于深度神经网络(DNN)的结构已被用于诊断植物病害。该领域的许多 DNN 模型都使用了 Dense 和 DenseNet 层的各种迭代,以增强感受野并捕捉数据中的复杂特征。然而,值得注意的是,由于其复杂性和资源密集性,此类模型通常会带来巨大的计算负担,并可能引入混叠伪影。为了克服这些局限性,我们在本文中提出了一种新颖的基于残差嵌套稀疏网络(RNDDNet)的深度学习模型。残差嵌套稀疏密集网模型的残差连接可实现所需的感受野,其稀疏因子可有效提取更多特征。RNDDNet 模型在识别植物病害方面表现出最高的准确性。这项研究提出了一种计算成本较低、结构紧凑的植物叶片病害检测模型。所提出的模型利用由 3,800 张辣椒叶照片组成的数据集来识别病害,这些照片被分为六个不同的类别:五个病害类别和一个健康辣椒类别。实验结果表明,所建议的模型准确率为 98.09%,精确率为 97%,召回率为 97.25%,F1 得分为 97.25%。与现有方法相比,所提出的方法更具优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RNDDNet: A residual nested dilated DenseNet based deep-learning model for chilli plant disease classification
The most significant peril to food safety arises from plant diseases, capable of substantially diminishing both the quantity and quality of agricultural yields. Identifying these plant diseases stands out as the foremost challenge within the agricultural sector. Convolutional and deep neural networks prove effective in resolving image classification challenges within the realm of computer vision. Numerous Deep Neural Network(DNN)-based structures have been employed to diagnose plant diseases. Many DNN models in the field make use of various iterations of Dense and DenseNet layers in order to enhance the receptive field and capture intricate features within the data. However, it is important to note that such models often come with a significant computational burden and can introduce aliasing artifacts due to their complexity and resource-intensive nature. To overcome those limitations, we proposed a novel Residual Nested Dilated DenseNet based deep-learning (RNDDNet) model in this paper. Residual Nested Dilated DenseNet model residual connections are achieving the required receptive field, and their dilation factors are effective in extracting more features. The RNDDNet model exhibits the highest level of accuracy in identifying plant diseases. This research introduces a less computational cost and compact model to detect diseases in plant leaves. The proposed model functions to identify diseases, utilizing a dataset comprising 3,800 photographs of chilli leaves, categorized into six distinct classes: five disorder classes and one healthy chilli class. Through experimentation, the outcomes indicate that the suggested model achieves an accuracy of 98.09 %, along with a precision of 97 %, a recall of 97.25 %, and an F1 score of 97.25%. The presented approach demonstrates its superiority over existing methodologies.
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来源期刊
Engineering Research Express
Engineering Research Express Engineering-Engineering (all)
CiteScore
2.20
自引率
5.90%
发文量
192
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