2019
DOI: 10.1016/j.rse.2019.111214
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User needs for future Landsat missions

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Cited by 50 publications
(34 citation statements)
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“…GreenSeeker®, WeedSeeker®, OptRx®, WEEDit®) have a limited radiometer resolution, recording only a few bands or VIs relative to the FieldSpec, individual wavelengths (recorded by FieldSpec) were grouped in order to form spectral bands (Table ). The definition of the spectral bands was based on the spectral bands from WorldView‐2, which agrees with the critical spectral bands identified for future spectral capabilities to satellites …”
Section: Methodsmentioning
confidence: 76%
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“…GreenSeeker®, WeedSeeker®, OptRx®, WEEDit®) have a limited radiometer resolution, recording only a few bands or VIs relative to the FieldSpec, individual wavelengths (recorded by FieldSpec) were grouped in order to form spectral bands (Table ). The definition of the spectral bands was based on the spectral bands from WorldView‐2, which agrees with the critical spectral bands identified for future spectral capabilities to satellites …”
Section: Methodsmentioning
confidence: 76%
“…The definition of the spectral bands was based on the spectral bands from WorldView-2, which agrees with the critical spectral bands identified for future spectral capabilities to satellites. 43 All spectral bands (only using training data) were subjected to conditional inference tree analysis within the partykit package in R in order to select spectral bands that allow a more evident separation between weeds and other targets. 44 These analysis are based on hierarchically ordered and recursively repeated binary splits, where the strength of each association is measured by a P value.…”
Section: Data Analysesmentioning
confidence: 99%
“…This study contributes uniquely to previous literature, however, in that it uses very high spatial resolution (pixel size < 10 m) satellite imagery for this temporal sampling analysis. Because image heterogeneity, which is affected by pixel size, is an important consideration in agricultural monitoring [9], and because recent agricultural monitoring efforts have been shifting towards the use of higher spatial resolution data [14,16,23], it is important to understand how these effects play out in high spatial resolution systems. This work builds on previous studies defining temporal sampling requirements for cloud-free imaging [7] and for "reasonably clear" (70-95% cloud-free) imaging of agriculture [8] by considering the specific effect of temporal revisit intervals on corn phenology monitoring via shape model fitting.…”
Section: Temporal Resamplingmentioning
confidence: 99%
“…These efforts include fusion of Landsat and MODIS data [10][11][12], creation of a harmonized Landsat 8 and Sentinel-2 image time-series [13,14], and comparison of imagery across multiple scales (for example, using PhenoCam, Landsat, MODIS, and the Visible Infrared Imaging Radiometer Suite (VIIRS) to monitor savanna and grassland [15]). Although sensor combination and data fusion are good ways to work with the imagery that is currently available, plans are being made so that future Landsat systems will meet user requirements for temporal sampling frequency [16]. In order to understand the effect of imaging frequency on our ability to monitor crop growth and predict yield, one way is to start with a very high frequency image time-series and remove data points as needed.…”
Section: Introductionmentioning
confidence: 99%
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