Department of Computer Engineering and Applications, GLA University, Uttar Pradesh, Mathura, India.
Environ Monit Assess. 2024 Jun 11;196(7):610. doi: 10.1007/s10661-024-12790-0.
Crop diseases pose significant threats to agriculture, impacting crop production. Biotic factors contribute to various diseases, including fungal, bacterial, and viral infections. Recent advancements in deep learning present a novel approach to the detection and recognition of these crop diseases. While considerable research has focused on identifying and recognizing crop diseases, fungal disease-affected crops have received relatively less attention and also detecting disease on different region datasets. This paper is about spotting fungal diseases in crops across different regions with diverse climates. It emphasizes the need for tailored detection methods, addressing the risk of mycotoxin production by fungi, which can harm both humans and animals. Detecting fungal diseases in apple, guava, and custard apple crops such as spot, scab, rust, rot, leaf spot, and insect ate. In the proposed work, the modified ResNeXt variant of the convolution neural network (CNN) technique was employed to predict 3 major crop classes of fungal disease. Initially, using Inception-v7 and ResNet for fungal disease in crops did not yield satisfactory results. A modified ResNeXt CNN model was proposed, showing improved fungal disease prediction. The novel model underwent a comparison with established methodologies. The suggested model draws upon a benchmark dataset consisting of 14,408 images capturing fungal diseases, categorized into three distinct classes: apple, custard apple, and guava. Experimental outcomes show that the proposed mutated ResNeXt model outperformed the state-of-the-art approaches. The model achieved 98.92% accuracy and high performance across recall, precision, and F1-score (above 99%) for the benchmark dataset, which gained encouragement and was comparable with the state-of-the-art approach.
作物病害对农业构成重大威胁,影响作物产量。生物因素导致各种疾病,包括真菌、细菌和病毒感染。深度学习的最新进展为这些作物病害的检测和识别提供了一种新方法。虽然已经有大量研究致力于识别和识别作物病害,但真菌病害作物受到的关注相对较少,而且在不同地区数据集上检测病害的情况也较少。本文介绍了在不同气候地区的作物中发现真菌病害的方法。它强调了需要采用定制的检测方法,解决真菌产生霉菌毒素的风险,霉菌毒素会对人类和动物造成危害。检测苹果、番石榴和番荔枝作物中的斑点病、黑星病、锈病、腐烂病、叶斑病和昆虫吃叶病等真菌病害。在提出的工作中,卷积神经网络(CNN)技术的改进 ResNeXt 变体被用于预测 3 种主要作物类别的真菌病害。最初,在作物的真菌病害中使用 Inception-v7 和 ResNet 并没有产生令人满意的结果。提出了一种改进的 ResNeXt CNN 模型,显示出改进的真菌病害预测。该新模型与已建立的方法进行了比较。该建议的模型使用包含 14408 张真菌病图像的基准数据集,这些图像分为三个不同的类别:苹果、番荔枝和番石榴。实验结果表明,所提出的突变 ResNeXt 模型优于最先进的方法。该模型在基准数据集上的准确率达到 98.92%,召回率、精度和 F1 得分(均高于 99%)表现出色,获得了鼓励,并与最先进的方法相当。
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