Akbar Frnaz, Aribi Yassine, Muhammad Usman Syed, Faraj Hamzah, Murayr Ahmed, Alasmari Fawaz, Khalid Shehzad
Department of Creative Technologies, Faculty of Computing and AI, Air University, Islamabad, Pakistan.
Department of Science and Technology, College of Ranyah, Taif University, Taif, Saudi Arabia.
PeerJ Comput Sci. 2024 Oct 18;10:e2369. doi: 10.7717/peerj-cs.2369. eCollection 2024.
Cotton is one of the major cash crop in the agriculture led economies across the world. Cotton leaf diseases affects its yield globally. Determining cotton lesions on leaves is difficult when the area is big and the size of lesions is varied. Automated cotton lesion detection is quite useful; however, it is challenging due to fewer disease class, limited size datasets, class imbalance problems, and need of comprehensive evaluation metrics. We propose a novel deep learning based method that augments the data using generative adversarial networks (GANs) to reduce the class imbalance issue and an ensemble-based method that combines the feature vector obtained from the three deep learning architectures including VGG16, Inception V3, and ResNet50. The proposed method offers a more precise, efficient and scalable method for automated detection of diseases of cotton crops. We have implemented the proposed method on publicly available dataset with seven disease and one health classes and have achieved highest accuracy of 95% and F-1 score of 98%. The proposed method performs better than existing state of the art methods.
棉花是全球以农业为主导的经济体中的主要经济作物之一。棉花叶部病害在全球范围内影响其产量。当病害区域面积较大且病斑大小各异时,确定棉花叶片上的病斑较为困难。棉花病斑的自动检测非常有用;然而,由于病害类别较少、数据集规模有限、类别不平衡问题以及需要综合评估指标,这一过程具有挑战性。我们提出了一种基于深度学习的新颖方法,该方法使用生成对抗网络(GAN)增强数据以减少类别不平衡问题,还提出了一种基于集成的方法,该方法结合了从包括VGG16、Inception V3和ResNet50在内的三种深度学习架构获得的特征向量。所提出的方法为棉花作物病害的自动检测提供了一种更精确、高效且可扩展的方法。我们已在具有七个病害类别和一个健康类别的公开可用数据集上实现了所提出的方法,并取得了95%的最高准确率和98%的F1分数。所提出的方法比现有的先进方法表现更好。