Naqvi Syeda Aimal Fatima, Khan Muhammad Attique, Hamza Ameer, Alsenan Shrooq, Alharbi Meshal, Teng Sokea, Nam Yunyoung
Department of Computer Science, HITEC University, Taxila, Pakistan.
Department of Artificial Intelligence, College of Computer Engineering and Science, Prince Mohammad Bin Fahd University, Al Khobar, Saudi Arabia.
Front Plant Sci. 2024 Sep 30;15:1469685. doi: 10.3389/fpls.2024.1469685. eCollection 2024.
Fruits and vegetables are among the most nutrient-dense cash crops worldwide. Diagnosing diseases in fruits and vegetables is a key challenge in maintaining agricultural products. Due to the similarity in disease colour, texture, and shape, it is difficult to recognize manually. Also, this process is time-consuming and requires an expert person. We proposed a novel deep learning and optimization framework for apple and cucumber leaf disease classification to consider the above challenges. In the proposed framework, a hybrid contrast enhancement technique is proposed based on the Bi-LSTM and Haze reduction to highlight the diseased part in the image. After that, two custom models named Bottleneck Residual with Self-Attention (BRwSA) and Inverted Bottleneck Residual with Self-Attention (IBRwSA) are proposed and trained on the selected datasets. After the training, testing images are employed, and deep features are extracted from the self-attention layer. Deep extracted features are fused using a concatenation approach that is further optimized in the next step using an improved human learning optimization algorithm. The purpose of this algorithm was to improve the classification accuracy and reduce the testing time. The selected features are finally classified using a shallow wide neural network (SWNN) classifier. In addition to that, both trained models are interpreted using an explainable AI technique such as LIME. Based on this approach, it is easy to interpret the inside strength of both models for apple and cucumber leaf disease classification and identification. A detailed experimental process was conducted on both datasets, Apple and Cucumber. On both datasets, the proposed framework obtained an accuracy of 94.8% and 94.9%, respectively. A comparison was also conducted using a few state-of-the-art techniques, and the proposed framework showed improved performance.
水果和蔬菜是全球营养密度最高的经济作物之一。诊断水果和蔬菜中的疾病是维持农产品质量的一项关键挑战。由于疾病在颜色、质地和形状上的相似性,手动识别很困难。此外,这个过程既耗时又需要专业人员。针对上述挑战,我们提出了一种用于苹果和黄瓜叶部疾病分类的新型深度学习与优化框架。在所提出的框架中,基于双向长短期记忆网络(Bi-LSTM)和去雾技术提出了一种混合对比度增强技术,以突出图像中的患病部分。之后,提出了两个名为带自注意力的瓶颈残差(BRwSA)和带自注意力的倒置瓶颈残差(IBRwSA)的定制模型,并在选定的数据集上进行训练。训练后,使用测试图像,并从自注意力层提取深度特征。深度提取的特征使用拼接方法进行融合,然后在下一步使用改进的人类学习优化算法进一步优化。该算法的目的是提高分类准确率并减少测试时间。最终使用浅宽神经网络(SWNN)分类器对选定的特征进行分类。除此之外,使用诸如局部可解释模型无关解释(LIME)这样的可解释人工智能技术对两个训练好的模型进行解释。基于这种方法,很容易解释这两个模型在苹果和黄瓜叶部疾病分类与识别方面的内在优势。在苹果和黄瓜这两个数据集上都进行了详细的实验过程。在这两个数据集上,所提出的框架分别获得了94.8%和94.9%的准确率。还使用了一些最新技术进行了比较,所提出的框架表现出了更好的性能。