2020
DOI: 10.1109/access.2020.3001652
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Evaluation of Efficacy of Fungicides for Control of Wheat Fusarium Head Blight Based on Digital Imaging

Abstract: Fusarium head blight (FHB) is one of the most important diseases in wheat worldwide. Evaluation and identification of effective fungicides are essential for control of FHB. However, traditional methods based on the manual disease severity assessment to evaluate the efficacy of fungicides are timeconsuming and laborsome. In this study, we developed a new method to rapidly assess the severity of FHB and evaluate the efficacy of fungicide application programs. Enhanced red-green-green (RGG) images were processed … Show more

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Cited by 16 publications
(6 citation statements)
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“…A color imaging camera with built-in RGB filters can rapidly capture RGB images through three spectral channels (red, green, and blue), and has great potential for real-time detection of wheat FHB [39]. Although K-means clustering and random forest classifier have been used for segmentations of disease areas in wheat spikes [40], the advantage of this digital imaging technique is greater when a large number of datasets are available and a more powerful machine learning algorithm is utilized. Deep learning with great merit of automatic feature learning is a core part of the larger family of machine learning based on multiple layers of artificial neural networks, which allows greater learning capabilities and higher computational performance.…”
Section: Introductionmentioning
confidence: 99%
“…A color imaging camera with built-in RGB filters can rapidly capture RGB images through three spectral channels (red, green, and blue), and has great potential for real-time detection of wheat FHB [39]. Although K-means clustering and random forest classifier have been used for segmentations of disease areas in wheat spikes [40], the advantage of this digital imaging technique is greater when a large number of datasets are available and a more powerful machine learning algorithm is utilized. Deep learning with great merit of automatic feature learning is a core part of the larger family of machine learning based on multiple layers of artificial neural networks, which allows greater learning capabilities and higher computational performance.…”
Section: Introductionmentioning
confidence: 99%
“…DCNN may utilised as a new tool for detecting and forecasting FHB in wheat was detected. Also, Zhang et al, [ 78 ] developed digital imaging, and tested the effects of fungi for the control of wheat Fusarium Head Blight. An unique way to estimate FHB symptoms and assessing the success of fungicide spraying programmes promptly was established.…”
Section: Crop Pest Classificationmentioning
confidence: 99%
“… hyperspectral image’s size reduced It is not developed real-time detection of agricultural diseases using affordable multispectral camera sensors. Zhang / 2020 [ 78 ] Created a novel technique to quickly determine the extent of FHB and gauge the success of fungicide treatment plans. fungicides that are efficient in controlling the FHB disease in wheat and other crop diseases are evaluated and identified using digital imaging technology.…”
Section: Crop Pest Classificationmentioning
confidence: 99%
“…Due to the time-consuming, laborious, and subjectivity of artificial detection methods, they are not popular in today's rapid development of agriculture. Image-based detection technology has been widely recognized in crop detection in recent years due to its strong real-time performance and robustness [9]- [12]. Generally, there are two methods for image-based object detection: the traditional manual featurebased object detection method [13]- [14] and the deep learning-based object detection method [15]- [17].…”
Section: A Detection Of Cropsmentioning
confidence: 99%
“…In formula (9), is the accuracy rate, is the recall rate, is the number of true positive samples, is the number of false positive samples, and is the number of false negative samples. When a single predicted object matches a ground-truth object whose is higher than the threshold, a true positive is calculated.…”
Section: Evaluation Indicatorsmentioning
confidence: 99%