Optimized encoder-decoder cascaded deep convolutional network for leaf disease image segmentation.

IF 1.1 3区 计算机科学 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Network-Computation in Neural Systems Pub Date : 2024-05-22 DOI:10.1080/0954898X.2024.2326493
David Femi, Manapakkam Anandan Mukunthan
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Abstract

Nowadays, Deep Learning (DL) techniques are being used to automate the identification and diagnosis of plant diseases, thereby enhancing global food security and enabling non-experts to detect these diseases. Among many DL techniques, a Deep Encoder-Decoder Cascaded Network (DEDCNet) model can precisely segment diseased areas from the leaf images to differentiate and classify multiple diseases. On the other hand, the model training depends on the appropriate selection of hyperparameters. Also, this network structure has weak robustness with different parameters. Hence, in this manuscript, an Optimized DEDCNet (ODEDCNet) model is proposed for improved leaf disease image segmentation. To choose the best DEDCNet hyperparameters, a brand-new Dingo Optimization Algorithm (DOA) is included in this model. The DOA depends on the foraging nature of dingoes, which comprises exploration and exploitation phases. In exploration, it attains many predictable decisions in the search area, whereas exploitation enables exploring the best decisions in a provided area. The segmentation accuracy is used as the fitness value of each dingo for hyperparameter selection. By configuring the chosen hyperparameters, the DEDCNet is trained to segment the leaf disease regions. The segmented images are further given to the pre-trained Convolutional Neural Networks (CNNs) followed by the Support Vector Machine (SVM) for classifying leaf diseases. ODEDCNet performs exceptionally well on the PlantVillage and Betel Leaf Image datasets, attaining an astounding 97.33% accuracy on the former and 97.42% accuracy on the latter. Both datasets achieve noteworthy recall, F-score, Dice coefficient, and precision values: the Betel Leaf Image dataset shows values of 97.4%, 97.29%, 97.35%, and 0.9897; the PlantVillage dataset shows values of 97.5%, 97.42%, 97.46%, and 0.9901, all completed in remarkably short processing times of 0.07 and 0.06 seconds, respectively. The achieved outcomes are evaluated with the contemporary optimization algorithms using the considered datasets to comprehend the efficiency of DOA.

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用于叶病图像分割的优化编码器-解码器级联深度卷积网络
如今,深度学习(DL)技术正被用于植物病害的自动识别和诊断,从而提高全球粮食安全,并使非专业人员也能检测这些病害。在众多深度学习技术中,深度编码器-解码器级联网络(DEDCNet)模型可以从叶片图像中精确分割出病害区域,从而对多种病害进行区分和分类。另一方面,模型的训练取决于超参数的适当选择。而且,这种网络结构在不同参数下的鲁棒性较弱。因此,本手稿提出了优化 DEDCNet(ODEDCNet)模型,用于改进叶病图像分割。为了选择最佳的 DEDCNet 超参数,该模型采用了全新的 Dingo 优化算法(DOA)。DOA 取决于恐龙的觅食特性,包括探索和利用阶段。在探索阶段,它会在搜索区域内做出许多可预测的决定,而在利用阶段,则会在提供的区域内探索最佳决定。在选择超参数时,会将分割精度作为每只恐龙的适应度值。通过配置所选的超参数,DEDCNet 就能训练分割叶片病害区域。分割后的图像将进一步交给预先训练好的卷积神经网络(CNN),然后由支持向量机(SVM)对叶片病害进行分类。ODEDCNet 在 PlantVillage 和槟榔叶图像数据集上表现出色,前者的准确率达到惊人的 97.33%,后者的准确率达到 97.42%。这两个数据集的召回率、F-score、Dice系数和精确度值都值得一提:槟榔叶图像数据集的召回率、F-score、Dice系数和精确度值分别为97.4%、97.29%、97.35%和0.9897;植物村数据集的召回率、F-score、Dice系数和精确度值分别为97.5%、97.42%、97.46%和0.9901,所有数据的处理时间分别为0.07秒和0.06秒。我们使用所考虑的数据集对所取得的成果与当代优化算法进行了评估,以了解 DOA 的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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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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