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Pixxel
Documentation
Developer Guide
Pixxel API
Overview
About PixxelPixxel's ConstellationPixxel's Tech Demonstrators

Getting Started
AuroraQuick Start

Tasking
Tasking Basics

Available BandsetsCustom Bandsets
Ordering and Cart
Archive OrderingWorking with CartOrder Listing, Status and Details
Catalog and Delivery
My CatalogExport ImageryNaming Convention
Explore Images & Create AOIs
ExploreSearch Location and Draw/Upload AOISearch and Select ImagesSatellite DataAOI Info and Scenes
Analytics Tools

Spectral SignatureSplit Compare
Analytical Models
Insights in Aurora (AOI Screen)Model Marketplace

Available Models

Gap-filled NDVIModel Quick Tour

Workflows
Workflow and Jobs
Aurora Intelligence
OverviewImage Search
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  1. Analytical Models
  2. Models
  3. Gap Filled NDVI
  4. Gap-filled NDVI

Gap-filled NDVI

Sensors Supported: Sentinel-2

The Gap-Filled NDVI Model is designed to fill in missing NDVI values caused by cloud cover, ensuring continuous assessment of farm health. The model leverages Sentinel-1 data to predict missing NDVI values. The model calculates the average NDVI with each farm boundary and fills in gaps caused by cloud cover.


Input

The below inputs are required to be provided by the user. The gaps in the given date range caused due to cloud cover will be gap filled.

NameDescription
Farm BoundaryBoundaries Extracted from the Farm Boundary Model
Start dateThe start date in "YYYY-MM-DD" format
End dateThe end date in "YYYY-MM-DD" format

Output

Model generate two outputs i.e. Classified map and its statistics. These files will be exported in .geojson and tabular format respectively.

timestampsnum of timestampsmean ndvigap filled ndvinumber of timestamps with gapsnumber of timestamps gaps filledpercent of gaps filled
2021-01-03, 2021-01-04, 2021-01-08, 2021-01-114nan, 0.4873, nan, nan0.4697, 0.4873, 0.3934, 0.356133100
2021-01-03, 2021-01-04, 2021-01-08, 2021-01-114nan, 0.47, nan, nan0.6204, 0.47, 0.4619, 0.651633100

USE CASE Example

Input

Farm Boundary Model output is used here as an input.

Along with Farm Boundary output, Time frame or Date range also need to be provided as an additional input since with this the mean NDVI values will be estimated.

NameDescription
Start dateThe start date in "YYYY-MM-DD" format
End dateThe end date in "YYYY-MM-DD" format

Output

Model generate two outputs i.e. Classified map and its statistics. These files can be downloaded as .geojson and tabular format respectively.

On the platform we can see the NDVI graphs for the selected farm.


Additional Details

Minimum size of Area of Interest required (in sq km): 10

Maximum size of Area of Interest supported (in sq km): 5000

Geographies supported: All geographies

Sensors Supported: Sentinel-2

Model Accuracy: 75% to 90%, depending on the geography

Important Note

  • The crop type, the soil and moisture do influence the Sentinel-1 backscatter and thereby the estimated gap filled NDVI values.
  • The number of days of cloud free data does also influence the outputs as this data be used in building the model.

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InputOutputUSE CASE ExampleInputOutputAdditional DetailsImportant Note