2021
DOI: 10.1177/15501477211007407
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Identification of cucumber leaf diseases using deep learning and small sample size for agricultural Internet of Things

Abstract: Due to the complex environments in real fields, it is challenging to conduct identification modeling and diagnosis of plant leaf diseases by directly utilizing in-situ images from the system of agricultural Internet of things. To overcome this shortcoming, one approach, based on small sample size and deep convolutional neural network, was proposed for conducting the recognition of cucumber leaf diseases under field conditions. One two-stage segmentation method was presented to acquire the lesion images by extr… Show more

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Cited by 55 publications
(30 citation statements)
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“…Furthermore, in the past few years, computer vision, especially by employing deep learning, has made remarkable progress. As highlighted by Zhang et al [ 56 ], who focused on identifying cucumber leaf diseases by utilizing deep learning, due to the complex environmental background, it is beneficial to eliminate background before model training. Moreover, accurate image classifiers for disease diagnosis need a large dataset of both healthy and diseased plant images.…”
Section: Introductionmentioning
confidence: 99%
“…Furthermore, in the past few years, computer vision, especially by employing deep learning, has made remarkable progress. As highlighted by Zhang et al [ 56 ], who focused on identifying cucumber leaf diseases by utilizing deep learning, due to the complex environmental background, it is beneficial to eliminate background before model training. Moreover, accurate image classifiers for disease diagnosis need a large dataset of both healthy and diseased plant images.…”
Section: Introductionmentioning
confidence: 99%
“…The author [32] claims the work is a generalized approach for detecting every disease while no evidence is provided. The author [33] has used two-stage segmentation to extract lesions from leafspot. Two-stage segmentation was implemented using GrabCut with the SVM method.…”
Section: Related Workmentioning
confidence: 99%
“…Biotic and abiotic stressors (Dhaka et al, 2021), such as microorganisms (e.g., virus, bacteria, fungi), insects, and environmental factors, negatively affect plant growth and health conditions, leading to the development of plant diseases or disorders and eventually low yield and quality of plant products (Zhang et al, 2021b). Imaging technologies (e.g., RGB, multi-/-hyper-spectral, fluorescence, thermal) offer a non-invasive and objective means for characterization and diagnosis of plant health conditions (e.g., plant disease detection) (Thomas et al, 2018;.…”
Section: Plant Healthmentioning
confidence: 99%
“…The GAN-synthesized data yielded an improvement of 5.2% in classification accuracy as compared to an 0.8% increase with traditional augmentation. The AR-GAN approach was later adopted by Zhang et al (2021b) for improving the identification of cucumber leaf diseases. Liu et al (2020) presented a GAN model with a channel decreasing generator to synthesize 4-class grape leaf images, reporting 98.7% classification accuracy, which is about 3% and 2% better than the models without and with only basic image augmentation, respectively.…”
Section: Plant Healthmentioning
confidence: 99%