High-performance deep transfer learning model with batch normalization based on multiscale feature fusion for tomato plant disease identification and categorization

IF 2.5 4区 环境科学与生态学 Q3 ENVIRONMENTAL SCIENCES
R Ramya, P Kumar
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引用次数: 0

Abstract

Deep learning and machine learning are cutting-edge methods for analysing images that have considerable potential. Artificial Neural Networks (A-NNs), one of the most well-known methods of computer intelligence, are now used in machine learning (ML) and deep transfer learning (DL) to raise plant production and quality. Identification and primary prevention of plant diseases at the appropriate time are essential for boosting productivity. Due to the phenomenon of minimally intense data in the background and foreground areas of the image, the extensive colour similarity between regions of unhealthy and normal leaves, the presence of noise in the sampling data, and changes in the location, size, and shape of plant leaf, it is difficult to correctly identify and classify plant diseases. In an effort to address these issues, a reliable technique for classifying plant diseases was developed by using a deep AlexNet CNN architecture as the main network with batch normalisation. In the three-step process, the first annotation is made to obtain the RoI (region of interest). The AlexNet CNN is therefore suggested for deep primary feature extraction in a constructed efficient network. The research demonstrates that the existing strategy is superior to more recent ones in terms of accuracy and dependability in recognising diseases in plants. Based on a deep transfer AlexNet CNN model, this research work developed a model for diseases identification and classification in plant leaves. It is trained using additional datasets that include a variety of plant leaf classifications and background images. From Plant Village and Kaggle, we gathered data on healthy and diseased tomato plant leaves. We are obtaining a near-balanced dataset containing ten different leaf disease kinds, such as bacterial, fungal, viral, and nutrient insufficiency. Ten classes have been considered for this research by gathering a dataset with associated images of the typical and abnormal tomato plant leaves. Considered in this work were the various labels for healthy and diseased tomato leaves, such as early blight, Bacterial spot, late bright mold, healthy, etc. Since deep CNN models have shown notable machine vision results, they are used in this case to diagnose and categorise plant illnesses from their leaves. As a result, the proposed CNN models can thus now be evaluated from confusion matrix using data analysis criteria, primarily focusing on metrics for evaluation like training and validation accuracy, loss, Recall, Precision, F1 score, processing speed, and performance.
基于多尺度特征融合的批量归一化高性能深度迁移学习模型,用于番茄植物病害识别和分类
深度学习和机器学习是分析图像的前沿方法,具有相当大的潜力。人工神经网络(A-NN)是最著名的计算机智能方法之一,目前已被用于机器学习(ML)和深度传输学习(DL),以提高植物产量和质量。适时识别和初级预防植物病害对提高生产率至关重要。由于图像背景和前景区域的数据强度极低、不健康叶片区域和正常叶片区域之间存在广泛的颜色相似性、采样数据中存在噪声以及植物叶片位置、大小和形状的变化等现象,很难对植物病害进行正确识别和分类。为了解决这些问题,我们开发了一种可靠的植物病害分类技术,该技术采用深度 AlexNet CNN 架构作为主网络,并进行了批量归一化处理。在三步流程中,首先进行标注以获得 RoI(感兴趣区域)。因此,建议在构建的高效网络中使用 AlexNet CNN 进行深度主要特征提取。研究表明,在识别植物病害的准确性和可靠性方面,现有策略优于最新策略。基于深度传输 AlexNet CNN 模型,这项研究工作开发了一个用于植物叶片病害识别和分类的模型。该模型使用了额外的数据集进行训练,其中包括各种植物叶片分类和背景图像。我们从 Plant Village 和 Kaggle 收集了健康和患病番茄植物叶片的数据。我们正在获得一个接近平衡的数据集,其中包含十种不同的叶片病害,如细菌、真菌、病毒和营养不足。通过收集典型和异常番茄植物叶片的相关图像数据集,本研究考虑了十个类别。这项工作考虑了健康和患病番茄叶片的各种标签,如早期枯萎病、菌斑病、晚期亮霉病、健康等。由于深度 CNN 模型已在机器视觉方面取得了显著成果,因此本案例中使用它们来诊断植物叶片上的疾病并对其进行分类。因此,现在可以使用数据分析标准从混淆矩阵对所提出的 CNN 模型进行评估,主要侧重于评估指标,如训练和验证准确率、损失、召回率、精度、F1 分数、处理速度和性能。
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来源期刊
Environmental Research Communications
Environmental Research Communications ENVIRONMENTAL SCIENCES-
CiteScore
3.50
自引率
0.00%
发文量
136
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