School of Mathematics, Statistics, and Computer Science, University of KwaZulu-Natal, King Edward Avenue, Pietermaritzburg, KwaZulu-Natal, 3201, South Africa.
Unit for Data Science and Computing, North-West University, 11 Hoffman Street, Potchefstroom, 2520, South Africa.
Environ Monit Assess. 2024 Feb 24;196(3):302. doi: 10.1007/s10661-024-12454-z.
Digital image processing has witnessed a significant transformation, owing to the adoption of deep learning (DL) algorithms, which have proven to be vastly superior to conventional methods for crop detection. These DL algorithms have recently found successful applications across various domains, translating input data, such as images of afflicted plants, into valuable insights, like the identification of specific crop diseases. This innovation has spurred the development of cutting-edge techniques for early detection and diagnosis of crop diseases, leveraging tools such as convolutional neural networks (CNN), K-nearest neighbour (KNN), support vector machines (SVM), and artificial neural networks (ANN). This paper offers an all-encompassing exploration of the contemporary literature on methods for diagnosing, categorizing, and gauging the severity of crop diseases. The review examines the performance analysis of the latest machine learning (ML) and DL techniques outlined in these studies. It also scrutinizes the methodologies and datasets and outlines the prevalent recommendations and identified gaps within different research investigations. As a conclusion, the review offers insights into potential solutions and outlines the direction for future research in this field. The review underscores that while most studies have concentrated on traditional ML algorithms and CNN, there has been a noticeable dearth of focus on emerging DL algorithms like capsule neural networks and vision transformers. Furthermore, it sheds light on the fact that several datasets employed for training and evaluating DL models have been tailored to suit specific crop types, emphasizing the pressing need for a comprehensive and expansive image dataset encompassing a wider array of crop varieties. Moreover, the survey draws attention to the prevailing trend where the majority of research endeavours have concentrated on individual plant diseases, ML, or DL algorithms. In light of this, it advocates for the development of a unified framework that harnesses an ensemble of ML and DL algorithms to address the complexities of multiple plant diseases effectively.
数字图像处理已经发生了重大转变,这要归功于深度学习(DL)算法的采用,这些算法在作物检测方面被证明远远优于传统方法。这些 DL 算法最近在各个领域都得到了成功的应用,将输入数据(例如受感染植物的图像)转化为有价值的见解,例如识别特定的作物疾病。这项创新推动了利用卷积神经网络(CNN)、K-最近邻(KNN)、支持向量机(SVM)和人工神经网络(ANN)等工具进行作物疾病早期检测和诊断的尖端技术的发展。本文全面探讨了用于诊断、分类和评估作物疾病严重程度的当代文献方法。该综述检查了这些研究中概述的最新机器学习(ML)和 DL 技术的性能分析。它还审查了方法和数据集,并概述了不同研究调查中的流行建议和确定的差距。作为结论,该综述提供了对潜在解决方案的洞察,并概述了该领域未来研究的方向。该综述强调,虽然大多数研究都集中在传统的 ML 算法和 CNN 上,但对胶囊神经网络和视觉转换器等新兴 DL 算法的关注明显不足。此外,它还揭示了一个事实,即用于训练和评估 DL 模型的几个数据集都经过了定制,以适应特定的作物类型,这强调了迫切需要一个全面而广泛的图像数据集,涵盖更广泛的作物品种。此外,该调查提请注意这样一种普遍趋势,即大多数研究工作都集中在单个植物疾病、ML 或 DL 算法上。有鉴于此,它提倡开发一个统一的框架,利用 ML 和 DL 算法的集合来有效地解决多种植物疾病的复杂性。