孟加拉国作物病害的优化识别:针对水稻、马铃薯和玉米的深度学习与 SVM 混合模型。

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY Journal of Imaging Pub Date : 2024-07-30 DOI:10.3390/jimaging10080183
Shohag Barman, Fahmid Al Farid, Jaohar Raihan, Niaz Ashraf Khan, Md Ferdous Bin Hafiz, Aditi Bhattacharya, Zaeed Mahmud, Sadia Afrin Ridita, Md Tanjil Sarker, Hezerul Abdul Karim, Sarina Mansor
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引用次数: 0

摘要

农业在孟加拉国的经济中发挥着至关重要的作用。确保作物的正常生长和健康对农业部门的发展至关重要。在孟加拉国,农作物病害对农业产量构成重大威胁,进而影响粮食安全。这就需要及时准确地识别这些病害,以确保粮食生产的可持续性。本研究的重点是建立一个混合深度学习模型,用于识别影响三大作物的三种特定病害:马铃薯晚疫病、水稻褐斑病和玉米普通锈病。所提出的模型利用了 EfficientNetB0 的特征提取功能(该功能以实现快速的高学习率而著称)以及 SVM(一种成熟的机器学习算法)的分类能力。这种统一的方法简化了数据处理和特征提取,可能会提高模型在不同作物和病害中的通用性。它还旨在解决精准农业应用中经常遇到的计算效率和准确性方面的挑战。所提出的混合模型达到了 97.29% 的准确率。通过与其他模型的比较分析,CNN、VGG16、ResNet50、Xception、Mobilenet V2、Autoencoders、Inception v3 和 EfficientNetB0 的准确率分别为 86.57%、83.29%、68.79%、94.07%、90.71%、87.90%、94.14% 和 96.14%,这表明我们提出的模型性能优越。
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Optimized Crop Disease Identification in Bangladesh: A Deep Learning and SVM Hybrid Model for Rice, Potato, and Corn.

Agriculture plays a vital role in Bangladesh's economy. It is essential to ensure the proper growth and health of crops for the development of the agricultural sector. In the context of Bangladesh, crop diseases pose a significant threat to agricultural output and, consequently, food security. This necessitates the timely and precise identification of such diseases to ensure the sustainability of food production. This study focuses on building a hybrid deep learning model for the identification of three specific diseases affecting three major crops: late blight in potatoes, brown spot in rice, and common rust in corn. The proposed model leverages EfficientNetB0's feature extraction capabilities, known for achieving rapid high learning rates, coupled with the classification proficiency of SVMs, a well-established machine learning algorithm. This unified approach streamlines data processing and feature extraction, potentially improving model generalizability across diverse crops and diseases. It also aims to address the challenges of computational efficiency and accuracy that are often encountered in precision agriculture applications. The proposed hybrid model achieved 97.29% accuracy. A comparative analysis with other models, CNN, VGG16, ResNet50, Xception, Mobilenet V2, Autoencoders, Inception v3, and EfficientNetB0 each achieving an accuracy of 86.57%, 83.29%, 68.79%, 94.07%, 90.71%, 87.90%, 94.14%, and 96.14% respectively, demonstrated the superior performance of our proposed model.

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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
期刊最新文献
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