Barman Shohag, Farid Fahmid Al, Raihan Jaohar, Khan Niaz Ashraf, Hafiz Md Ferdous Bin, Bhattacharya Aditi, Mahmud Zaeed, Ridita Sadia Afrin, Sarker Md Tanjil, Karim Hezerul Abdul, Mansor Sarina
Department of Computer Science & Engineering, Bangabandhu Sheikh Mujibur Rahman Science and Technology University, Pirojpur 8500, Bangladesh.
Faculty of Engineering, Multimedia University, Cyberjaya 63100, Malaysia.
J Imaging. 2024 Jul 30;10(8):183. doi: 10.3390/jimaging10080183.
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.
农业在孟加拉国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于农业部门的发展至关重要。在孟加拉国的背景下,作物病害对农业产量乃至粮食安全构成了重大威胁。这就需要及时、准确地识别此类病害,以确保粮食生产的可持续性。本研究专注于构建一个混合深度学习模型,用于识别影响三种主要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的特征提取能力,其以实现快速高学习率而闻名,同时结合了支持向量机(SVM)的分类能力,支持向量机是一种成熟的机器学习算法。这种统一的方法简化了数据处理和特征提取,有可能提高模型在不同作物和病害上的通用性。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挑战。所提出的混合模型准确率达到了97.29%。与其他模型的对比分析表明,CNN、VGG16、ResNet50、Xception、Mobilenet V2、自动编码器、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%,这证明了我们所提出模型的卓越性能。