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Detecting Cover Crop End-Of-Season Using VENµS and Sentinel-2 Satellite Imagery
by
Hively, W. Dean
, Anderson, Martha C.
, Gao, Feng
in
Agricultural land
/ Agricultural practices
/ Agricultural research
/ Agriculture
/ Algorithms
/ Biomass
/ biomass production
/ Carbon sequestration
/ Conservation practices
/ cover crop
/ cover crop termination
/ Cover crops
/ crop harvest
/ crop termination
/ Crops
/ detection
/ Environmental monitoring
/ estimation
/ exhibitions
/ Farms
/ field experimentation
/ Harvest
/ harvest date
/ Herbicides
/ Latency
/ Microsatellites
/ Nitrogen
/ normalized difference vegetation index
/ Normalized difference vegetative index
/ Phenology
/ Physiology
/ Remote sensing
/ remote sensing phenology
/ Research facilities
/ Satellite imagery
/ Satellites
/ Seasons
/ Senescence
/ soil
/ Soil improvement
/ spatial data
/ Spatial discrimination
/ Spatial resolution
/ Temporal resolution
/ Time series
/ time series analysis
/ uncertainty
/ Vegetation
/ Vegetation index
/ VENµS
/ Water quality
/ Watershed management
/ Watersheds
/ Winter
2020
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Detecting Cover Crop End-Of-Season Using VENµS and Sentinel-2 Satellite Imagery
by
Hively, W. Dean
, Anderson, Martha C.
, Gao, Feng
in
Agricultural land
/ Agricultural practices
/ Agricultural research
/ Agriculture
/ Algorithms
/ Biomass
/ biomass production
/ Carbon sequestration
/ Conservation practices
/ cover crop
/ cover crop termination
/ Cover crops
/ crop harvest
/ crop termination
/ Crops
/ detection
/ Environmental monitoring
/ estimation
/ exhibitions
/ Farms
/ field experimentation
/ Harvest
/ harvest date
/ Herbicides
/ Latency
/ Microsatellites
/ Nitrogen
/ normalized difference vegetation index
/ Normalized difference vegetative index
/ Phenology
/ Physiology
/ Remote sensing
/ remote sensing phenology
/ Research facilities
/ Satellite imagery
/ Satellites
/ Seasons
/ Senescence
/ soil
/ Soil improvement
/ spatial data
/ Spatial discrimination
/ Spatial resolution
/ Temporal resolution
/ Time series
/ time series analysis
/ uncertainty
/ Vegetation
/ Vegetation index
/ VENµS
/ Water quality
/ Watershed management
/ Watersheds
/ Winter
2020
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Detecting Cover Crop End-Of-Season Using VENµS and Sentinel-2 Satellite Imagery
by
Hively, W. Dean
, Anderson, Martha C.
, Gao, Feng
in
Agricultural land
/ Agricultural practices
/ Agricultural research
/ Agriculture
/ Algorithms
/ Biomass
/ biomass production
/ Carbon sequestration
/ Conservation practices
/ cover crop
/ cover crop termination
/ Cover crops
/ crop harvest
/ crop termination
/ Crops
/ detection
/ Environmental monitoring
/ estimation
/ exhibitions
/ Farms
/ field experimentation
/ Harvest
/ harvest date
/ Herbicides
/ Latency
/ Microsatellites
/ Nitrogen
/ normalized difference vegetation index
/ Normalized difference vegetative index
/ Phenology
/ Physiology
/ Remote sensing
/ remote sensing phenology
/ Research facilities
/ Satellite imagery
/ Satellites
/ Seasons
/ Senescence
/ soil
/ Soil improvement
/ spatial data
/ Spatial discrimination
/ Spatial resolution
/ Temporal resolution
/ Time series
/ time series analysis
/ uncertainty
/ Vegetation
/ Vegetation index
/ VENµS
/ Water quality
/ Watershed management
/ Watersheds
/ Winter
2020
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Detecting Cover Crop End-Of-Season Using VENµS and Sentinel-2 Satellite Imagery
Journal Article
Detecting Cover Crop End-Of-Season Using VENµS and Sentinel-2 Satellite Imagery
2020
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Overview
Cover crops are planted during the off-season to protect the soil and improve watershed management. The ability to map cover crop termination dates over agricultural landscapes is essential for quantifying conservation practice implementation, and enabling estimation of biomass accumulation during the active cover period. Remote sensing detection of end-of-season (termination) for cover crops has been limited by the lack of high spatial and temporal resolution observations and methods. In this paper, a new within-season termination (WIST) algorithm was developed to map cover crop termination dates using the Vegetation and Environment monitoring New Micro Satellite (VENµS) imagery (5 m, 2 days revisit). The WIST algorithm first detects the downward trend (senescent period) in the Normalized Difference Vegetation Index (NDVI) time-series and then refines the estimate to the two dates with the most rapid rate of decrease in NDVI during the senescent period. The WIST algorithm was assessed using farm operation records for experimental fields at the Beltsville Agricultural Research Center (BARC). The crop termination dates extracted from VENµS and Sentinel-2 time-series in 2019 and 2020 were compared to the recorded termination operation dates. The results show that the termination dates detected from the VENµS time-series (aggregated to 10 m) agree with the recorded harvest dates with a mean absolute difference of 2 days and uncertainty of 4 days. The operational Sentinel-2 time-series (10 m, 4–5 days revisit) also detected termination dates at BARC but had 7% missing and 10% false detections due to less frequent temporal observations. Near-real-time simulation using the VENµS time-series shows that the average lag times of termination detection are about 4 days for VENµS and 8 days for Sentinel-2, not including satellite data latency. The study demonstrates the potential for operational mapping of cover crop termination using high temporal and spatial resolution remote sensing data.
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