具有深度迁移学习模型的葡萄叶片营养缺乏病自动检测和分类平衡优化器。

IF 1.1 3区 计算机科学 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Network-Computation in Neural Systems Pub Date : 2024-02-01 Epub Date: 2024-02-08 DOI:10.1080/0954898X.2023.2275722
Vaishali Bajait, Nandagopal Malarvizhi
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引用次数: 0

摘要

我们的方法包括图片预处理、利用SqueezeNet模型的特征提取、利用平衡优化器(EO)算法的超参数优化以及利用堆叠自动编码器(SAE)模型的分类。这些过程中的每一个都是在一系列单独的步骤中进行的。在图像预处理阶段,使用对比度受限的自适应直方图均衡(CLAHE)来提高对比度,并使用自适应双边滤波(ABF)来消除可能存在的任何噪声。SqueezeNet范式用于从经过预处理的图片中获得相关特征,EO技术用于微调超参数。最后,SAE模型对影响葡萄叶的疾病进行了分类。EODTL-GLDC技术的模拟分析测试了新的植物病害数据集,并对结果进行了展望。结果表明,该模型优于其他通常与机器学习相关的深度学习技术和方法。具体而言,该技术能够在测试数据集上获得96.31%的精度,在80:20分割的训练数据集上达到96.88%的精度。这些结果提供了更多的证据,证明所提出的策略在葡萄叶病的自动化检测和分类方面是成功的。
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Automated grape leaf nutrition deficiency disease detection and classification Equilibrium Optimizer with deep transfer learning model.

Our approach includes picture preprocessing, feature extraction utilizing the SqueezeNet model, hyperparameter optimisation utilising the Equilibrium Optimizer (EO) algorithm, and classification utilising a Stacked Autoencoder (SAE) model. Each of these processes is carried out in a series of separate steps. During the image preprocessing stage, contrast limited adaptive histogram equalisations (CLAHE) is utilized to improve the contrasts, and Adaptive Bilateral Filtering (ABF) to get rid of any noise that may be present. The SqueezeNet paradigm is utilized to obtain relevant characteristics from the pictures that have been preprocessed, and the EO technique is utilized to fine-tune the hyperparameters. Finally, the SAE model categorises the diseases that affect the grape leaf. The simulation analysis of the EODTL-GLDC technique tested New Plant Diseases Datasets and the results were inspected in many prospects. The results demonstrate that this model outperforms other deep learning techniques and methods that are more often related to machine learning. Specifically, this technique was able to attain a precision of 96.31% on the testing datasets and 96.88% on the training data set that was split 80:20. These results offer more proof that the suggested strategy is successful in automating the detection and categorization of grape leaf diseases.

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来源期刊
Network-Computation in Neural Systems
Network-Computation in Neural Systems 工程技术-工程:电子与电气
CiteScore
3.70
自引率
1.30%
发文量
22
审稿时长
>12 weeks
期刊介绍: Network: Computation in Neural Systems welcomes submissions of research papers that integrate theoretical neuroscience with experimental data, emphasizing the utilization of cutting-edge technologies. We invite authors and researchers to contribute their work in the following areas: Theoretical Neuroscience: This section encompasses neural network modeling approaches that elucidate brain function. Neural Networks in Data Analysis and Pattern Recognition: We encourage submissions exploring the use of neural networks for data analysis and pattern recognition, including but not limited to image analysis and speech processing applications. Neural Networks in Control Systems: This category encompasses the utilization of neural networks in control systems, including robotics, state estimation, fault detection, and diagnosis. Analysis of Neurophysiological Data: We invite submissions focusing on the analysis of neurophysiology data obtained from experimental studies involving animals. Analysis of Experimental Data on the Human Brain: This section includes papers analyzing experimental data from studies on the human brain, utilizing imaging techniques such as MRI, fMRI, EEG, and PET. Neurobiological Foundations of Consciousness: We encourage submissions exploring the neural bases of consciousness in the brain and its simulation in machines.
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