Towards Leaf Disease Recognition from Individual Lesions Using Deep Learning Techniques

Lawrence C. Ngugi, M. Abo-Zahhad, M. Abdelwahab
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Abstract

Leaf disease recognition using image processing techniques is presently an active area of research. In recent years, most studies have focused on the use of deep learning techniques for crop disease recognition as these models have consistently outperformed shallow classifiers. When used to classify crop diseases from images taken under controlled lab conditions, deep learning models have achieved near perfect recognition accuracies. However, when used with images captured under field conditions, the deep learning models’ performance dropped considerably. Research showed that complex illumination and background conditions are mainly responsible for this decline in performance. Subsequent studies demonstrated that classifying images of individual lesions rather than images of whole leaves improved disease recognition accuracy while at the same time allowing for the detection of multiple infections presenting on the same leaf. Latest studies have proposed algorithms for automatic extraction and classification of lesions from leaf images. In this paper, the authors present a brief survey of the state-of-art and their contributions towards automatic recognition of disease lesions using deep learning methods. In particular, this paper highlights two deep learning models named KijaniNet and SwapNet which were proposed for use in automatic lesion extraction and classification algorithms. The paper concludes by suggesting some research points to be considered in future studies.
利用深度学习技术识别单个病变的叶片疾病
利用图像处理技术识别叶片病害是目前研究的一个活跃领域。近年来,大多数研究都集中在使用深度学习技术进行作物病害识别,因为这些模型一直优于浅分类器。当用于从受控实验室条件下拍摄的图像中对作物病害进行分类时,深度学习模型已经达到了近乎完美的识别精度。然而,当与现场条件下捕获的图像一起使用时,深度学习模型的性能大幅下降。研究表明,复杂的照明和背景条件是导致性能下降的主要原因。随后的研究表明,对单个病变的图像进行分类,而不是对整个叶片的图像进行分类,可以提高疾病识别的准确性,同时可以检测到同一叶片上出现的多种感染。最近的研究提出了从叶片图像中自动提取和分类病变的算法。在本文中,作者简要介绍了使用深度学习方法自动识别疾病病变的最新进展及其贡献。本文特别强调了两个深度学习模型KijaniNet和SwapNet,这两个模型被提出用于自动病灶提取和分类算法。文章最后提出了今后研究中需要考虑的研究要点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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