2022
DOI: 10.1186/s13007-022-00882-2
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Rice bacterial blight resistant cultivar selection based on visible/near-infrared spectrum and deep learning

Abstract: Background Rice bacterial blight (BB) has caused serious damage in rice yield and quality leading to huge economic loss and food safety problems. Breeding disease resistant cultivar becomes the eco-friendliest and most effective alternative to regulate its outburst, since the propagation of pathogenic bacteria is restrained. However, the BB resistance cultivar selection suffers tremendous labor cost, low efficiency, and subjective human error. And dynamic rice BB phenotyping study is absent fro… Show more

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Cited by 15 publications
(6 citation statements)
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References 59 publications
(54 reference statements)
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“…The ATT-LSTM model performed better than the SVM model. Compared with Zhang et al (2022)'s study on rice BB severity evaluation based on attention mechanism and convolutional neural network model, the accuracy of this study increased by 4.82%. The proposed ATT-LSTM is suitable for evaluating rice BB severity, and the attention block is conducive to feature selection.…”
Section: Attention Mechanism Is Suitable For Feature Selectionmentioning
confidence: 70%
“…The ATT-LSTM model performed better than the SVM model. Compared with Zhang et al (2022)'s study on rice BB severity evaluation based on attention mechanism and convolutional neural network model, the accuracy of this study increased by 4.82%. The proposed ATT-LSTM is suitable for evaluating rice BB severity, and the attention block is conducive to feature selection.…”
Section: Attention Mechanism Is Suitable For Feature Selectionmentioning
confidence: 70%
“…However, it should be pointed out that the high dimension of spectral data limits the calculation speed to some extent, while the spectral index is a combination of several bands, which can obtain similar results while reducing the dimension ( Bloem et al, 2020 ). In this work, living plants were used to achieve non-destructive identification, which was different from in vitro leaves reported in previous study ( Zhang et al, 2022a ). The model constructed based on spectral index could accurately classify glyphosate resistant cultivars at 6 DAT (accuracy = 100% in Table 1 ), which was higher than previous study ( Feng et al, 2018 ), indicating the feasibility and effectiveness of spectral index in the identification of glyphosate resistant cultivar, and the detection performance was better than the sensitive wavelengths and sensitive chlorophyll fluorescence parameters.…”
Section: Discussionmentioning
confidence: 99%
“…First of all, it is worth noting that the treatment group of R, the control group of R, the treatment group of S, and the control group of S are designated as RT, RW, ST, and SW, respectively. Time-series visible/near-infrared hyperspectral images of alive maize plants were collected at 2, 4, 6, and 8 days after treatment (DAT) by a line-scan HSI system in the visible/near-infrared range (380–1,030 nm), which was reported in detail in previous study ( Zhang et al, 2022a ). Over the image acquisition, in order to facilitate the extraction of the spectrum of each leaf, it was necessary to ensure that leaves did not overlap with each other and the leaves were as flat as possible.…”
Section: Methodsmentioning
confidence: 99%
“…Similarly, NDVI values correlated well with the extension of the lesions caused by X. campestris pv. oryzae on rice leaves (Zhang et al, 2022). Moreover, several works have compared the association between climate change and the interannual variability registered on NDVI in several locations around the world (Kalisa et al, 2019;Bagherzadeh et al, 2020;Zhao et al, 2021).…”
Section: Introductionmentioning
confidence: 99%