2018
DOI: 10.3390/rs10030426
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Leaf and Canopy Level Detection of Fusarium Virguliforme (Sudden Death Syndrome) in Soybean

Abstract: Pre-visual detection of crop disease is critical for food security. Field-based spectroscopic remote sensing offers a method to enable timely detection, but still requires appropriate instrumentation and testing. Soybean plants were spectrally measured throughout a growing season to assess the capacity of leaf and canopy level spectral measurements to detect non-visual foliage symptoms induced by Fusarium virguliforme (Fv, which causes sudden death syndrome). Canopy reflectance measurements were made using the… Show more

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Cited by 53 publications
(42 citation statements)
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“…Overall, even under the controlled conditions of this experiment, some plots were noticeably heterogeneous (for example, plot no. 16). There was also a slight difference in LAI predictions between the western and the eastern half of the study site, even within the same treatment classes.…”
Section: Plsr and Mlrmentioning
confidence: 99%
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“…Overall, even under the controlled conditions of this experiment, some plots were noticeably heterogeneous (for example, plot no. 16). There was also a slight difference in LAI predictions between the western and the eastern half of the study site, even within the same treatment classes.…”
Section: Plsr and Mlrmentioning
confidence: 99%
“…Once these obstacles have been overcome, pushbroom scanner systems are able to record substantially less noise-affected spectra with higher resolution (spatial and spectral) than snapshot systems due to their narrower line-shaped camera aperture and higher sensor resolution [6].Since grain yield has no direct influence on the reflectance of crops, it should be derived indirectly by estimating other biophysical parameters [14]. Although [15][16][17][18] could show that an estimation of grain yield directly from reflection spectra is statistically possible, it was finally determined that this relationship can only be explained indirectly by biophysical and biochemical properties. Among other plant properties, chlorophyll content (CHL) and leaf area index (LAI) correlated with grain yield [19], which can be estimated reliably from remote sensing data of different scales and platforms [4].…”
mentioning
confidence: 99%
“…SDS-infected plants tend to show early chlorophyll deterioration [16], resulting in spectral responses that increase reflectance in the blue and red bands while decreasing reflectance in the green and NIR regions. When plant diseases such as SDS produce necrotic or chlorotic symptoms on leaves, diseased plants show an overall increase in reflectance in the visible region, especially in the red band [16,25], and simultaneously decreased reflectance in the green and NIR regions. Reflectance in the NIR regions is affected primarily by leaf structure and canopy biomass, which are influenced by plant water and health status [22,[25][26][27].Recently, successful early detection of SDS in soybean leaves [16,25] and canopies [25,28] has been achieved using handheld, tractor-mounted, and unmanned aerial vehicle (UAV)-mounted remote sensing tools.…”
mentioning
confidence: 99%
“…When plant diseases such as SDS produce necrotic or chlorotic symptoms on leaves, diseased plants show an overall increase in reflectance in the visible region, especially in the red band [16,25], and simultaneously decreased reflectance in the green and NIR regions. Reflectance in the NIR regions is affected primarily by leaf structure and canopy biomass, which are influenced by plant water and health status [22,[25][26][27].…”
mentioning
confidence: 99%
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