Detecting Severity Levels of Cucumber Leaf Spot Disease using ResNext Deep Learning Model: A Digital Image Analysis Approach

The fungal disease known as cucumber leaf spot (CLS) is capable of causing substantial damage to cucumber crops, leading to a decrease in production and quality. Early detection and management of the disease are critical for minimizing its impact on crop productivity. In this study, the authors developed a Residual Next-50 (ResNext-50) deep learning (DL) model based on 5 different severity levels for the multi-classification of CLS disease. The work collected a dataset of 50,000 digital images of cucumber leaves from multiple sources, including local farmers and agricultural research institutions. The dataset was segmented into training, validation, and testing groups, each of which contained 7,500 pictures. The training set contained 35,000 photos. The proposed model achieved an overall accuracy of 97.81% on the testing set, outperforming several baseline models, including U-Net, YOLO v5, and KNN. The confusion matrix revealed that the model was most accurate in identifying cucumber leaves with very low severity of the disease (Level 1) and very high severity of the disease (Level 5) while having lower precision values for cucumber leaves with moderate severity of the disease (Level 3). The suggested study demonstrates the potential of DL models for the accurate and efficient classification of CLS disease based on severity levels, providing valuable insights for the early detection and management of the disease. The insight that was gleaned from this research could also contribute to the development of methods that are more efficient in the prevention and management of CLS illness, ultimately improving the sustainability and productivity of cucumber cultivation.

[1]  Lingxian Zhang,et al.  A multi-scale cucumber disease detection method in natural scenes based on YOLOv5 , 2022, Comput. Electron. Agric..

[2]  Lingxian Zhang,et al.  Attention-optimized DeepLab V3 + for automatic estimation of cucumber disease severity , 2022, Plant Methods.

[3]  S. Tiwari,et al.  Early prediction of hypothyroidism and multiclass classification using predictive machine learning and deep learning , 2022, Measurement: Sensors.

[4]  Syed Sajid Ullah,et al.  Blended Features Classification of Leaf-Based Cucumber Disease Using Image Processing Techniques , 2021, Complex..

[5]  Gaurav Pant,et al.  ResNeXt convolution neural network topology-based deep learning model for identification and classification of Pediastrum , 2020, Algal Research.

[6]  Smart Cities using Internet of Things: Recent Trends and Techniques , 2019, International Journal of Innovative Technology and Exploring Engineering.

[7]  Yun Shi,et al.  Cucumber leaf disease identification with global pooling dilated convolutional neural network , 2019, Comput. Electron. Agric..

[8]  Yixiang Huang,et al.  Deep Learning-Based Segmentation and Quantification of Cucumber Powdery Mildew Using Convolutional Neural Network , 2019, Front. Plant Sci..

[9]  S. Kadry,et al.  Multiclass Cucumber Leaf Diseases Recognition Using Best Feature Selection , 2022, Computers, Materials & Continua.

[10]  Huaji Zhu,et al.  EFDet: An efficient detection method for cucumber disease under natural complex environments , 2021, Comput. Electron. Agric..

[11]  Chunshan Wang,et al.  A cucumber leaf disease severity classification method based on the fusion of DeepLabV3+ and U-Net , 2021, Comput. Electron. Agric..