Haque Md Ashraful, Marwaha Sudeep, Arora Alka, Deb Chandan Kumar, Misra Tanuj, Nigam Sapna, Hooda Karambir Singh
Division of Computer Applications, Indian Council of Agriculture Research (ICAR)-Indian Agricultural Statistics Research Institute, New Delhi, India.
Department of Computer Science, Rani Lakshmi Bai Central Agricultural University, Jhansi, India.
Front Plant Sci. 2022 Dec 19;13:1077568. doi: 10.3389/fpls.2022.1077568. eCollection 2022.
Maydis leaf blight (MLB) of maize (), a serious fungal disease, is capable of causing up to 70% damage to the crop under severe conditions. Severity of diseases is considered as one of the important factors for proper crop management and overall crop yield. Therefore, it is quite essential to identify the disease at the earliest possible stage to overcome the yield loss. In this study, we created an image database of maize crop, MDSD (Maydis leaf blight Disease Severity Dataset), containing 1,760 digital images of MLB disease, collected from different agricultural fields and categorized into four groups viz. healthy, low, medium and high severity stages. Next, we proposed a lightweight convolutional neural network (CNN) to identify the severity stages of MLB disease. The proposed network is a simple CNN framework augmented with two modified modules, making it a lightweight and efficient multi-scale feature extractor. The proposed network reported approx. 99.13% classification accuracy with the f1-score of 98.97% on the test images of MDSD. Furthermore, the class-wise accuracy levels were 100% for healthy samples, 98% for low severity samples and 99% for the medium and high severity samples. In addition to that, our network significantly outperforms the popular pretrained models, viz. VGG16, VGG19, InceptionV3, ResNet50, Xception, MobileNetV2, DenseNet121 and NASNetMobile for the MDSD image database. The experimental findings revealed that our proposed lightweight network is excellent in identifying the images of severity stages of MLB disease despite complicated background conditions.
玉米大斑病(MLB)是一种严重的真菌病害,在严重情况下可对作物造成高达70%的损害。病害严重程度被视为作物合理管理和总体作物产量的重要因素之一。因此,尽早识别病害对于克服产量损失至关重要。在本研究中,我们创建了一个玉米作物图像数据库,即MDSD(大斑病病害严重程度数据集),其中包含从不同农田收集的1760张大斑病数字图像,并分为四组,即健康、低、中、高严重程度阶段。接下来,我们提出了一种轻量级卷积神经网络(CNN)来识别大斑病的严重程度阶段。所提出的网络是一个简单的CNN框架,增加了两个改进模块,使其成为一个轻量级且高效的多尺度特征提取器。在所提出的网络在MDSD的测试图像上报告了约99.13%的分类准确率,F1分数为98.97%。此外,健康样本的类别准确率为100%,低严重程度样本为98%,中高严重程度样本为99%。除此之外,对于MDSD图像数据库,我们的网络显著优于流行的预训练模型,即VGG16、VGG19、InceptionV3、ResNet50、Xception、MobileNetV2、DenseNet121和NASNetMobile。实验结果表明,尽管背景条件复杂,但我们提出的轻量级网络在识别大斑病严重程度阶段的图像方面表现出色。