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ee.ImageCollection.aggregate_sample_var
Organiza tus páginas con colecciones
Guarda y categoriza el contenido según tus preferencias.
Agrega una propiedad determinada de los objetos en una colección y calcula la varianza de la muestra de los valores de la propiedad seleccionada.
Uso Muestra ImageCollection. aggregate_sample_var (property)
Número
Argumento Tipo Detalles esta: collection
FeatureCollection Es la colección para agregar. property
String Es la propiedad que se usará de cada elemento de la colección.
Ejemplos
Editor de código (JavaScript)
// A Lansat 8 TOA image collection for a specific year and location.
var col = ee . ImageCollection ( "LANDSAT/LC08/C02/T1_TOA" )
. filterBounds ( ee . Geometry . Point ([ - 122.073 , 37.188 ]))
. filterDate ( '2018' , '2019' );
// An image property of interest, percent cloud cover in this case.
var prop = 'CLOUD_COVER' ;
// Use ee.ImageCollection.aggregate_* functions to fetch information about
// values of a selected property across all images in the collection. For
// example, produce a list of all values, get counts, and calculate statistics.
print ( 'List of property values' , col . aggregate_array ( prop ));
print ( 'Count of property values' , col . aggregate_count ( prop ));
print ( 'Count of distinct property values' , col . aggregate_count_distinct ( prop ));
print ( 'First collection element property value' , col . aggregate_first ( prop ));
print ( 'Histogram of property values' , col . aggregate_histogram ( prop ));
print ( 'Min of property values' , col . aggregate_min ( prop ));
print ( 'Max of property values' , col . aggregate_max ( prop ));
// The following methods are applicable to numerical properties only.
print ( 'Mean of property values' , col . aggregate_mean ( prop ));
print ( 'Sum of property values' , col . aggregate_sum ( prop ));
print ( 'Product of property values' , col . aggregate_product ( prop ));
print ( 'Std dev (sample) of property values' , col . aggregate_sample_sd ( prop ));
print ( 'Variance (sample) of property values' , col . aggregate_sample_var ( prop ));
print ( 'Std dev (total) of property values' , col . aggregate_total_sd ( prop ));
print ( 'Variance (total) of property values' , col . aggregate_total_var ( prop ));
print ( 'Summary stats of property values' , col . aggregate_stats ( prop ));
// Note that if the property is formatted as a string, min and max will
// respectively return the first and last values according to alphanumeric
// order of the property values.
var propString = 'LANDSAT_SCENE_ID' ;
print ( 'List of property values (string)' , col . aggregate_array ( propString ));
print ( 'Min of property values (string)' , col . aggregate_min ( propString ));
print ( 'Max of property values (string)' , col . aggregate_max ( propString ));
Configuración de Python
Consulta la página
Entorno de Python para obtener información sobre la API de Python y el uso de geemap
para el desarrollo interactivo.
import ee
import geemap.core as geemap
Colab (Python)
from pprint import pprint
# A Lansat 8 TOA image collection for a specific year and location.
col = ee . ImageCollection ( "LANDSAT/LC08/C02/T1_TOA" ) . filterBounds (
ee . Geometry . Point ([ - 122.073 , 37.188 ])) . filterDate ( '2018' , '2019' )
# An image property of interest, percent cloud cover in this case.
prop = 'CLOUD_COVER'
# Use ee.ImageCollection.aggregate_* functions to fetch information about
# values of a selected property across all images in the collection. For
# example, produce a list of all values, get counts, and calculate statistics.
print ( 'List of property values:' , col . aggregate_array ( prop ) . getInfo ())
print ( 'Count of property values:' , col . aggregate_count ( prop ) . getInfo ())
print ( 'Count of distinct property values:' ,
col . aggregate_count_distinct ( prop ) . getInfo ())
print ( 'First collection element property value:' ,
col . aggregate_first ( prop ) . getInfo ())
print ( 'Histogram of property values:' )
pprint ( col . aggregate_histogram ( prop ) . getInfo ())
print ( 'Min of property values:' , col . aggregate_min ( prop ) . getInfo ())
print ( 'Max of property values:' , col . aggregate_max ( prop ) . getInfo ())
# The following methods are applicable to numerical properties only.
print ( 'Mean of property values:' , col . aggregate_mean ( prop ) . getInfo ())
print ( 'Sum of property values:' , col . aggregate_sum ( prop ) . getInfo ())
print ( 'Product of property values:' , col . aggregate_product ( prop ) . getInfo ())
print ( 'Std dev (sample) of property values:' ,
col . aggregate_sample_sd ( prop ) . getInfo ())
print ( 'Variance (sample) of property values:' ,
col . aggregate_sample_var ( prop ) . getInfo ())
print ( 'Std dev (total) of property values' ,
col . aggregate_total_sd ( prop ) . getInfo ())
print ( 'Variance (total) of property values:' ,
col . aggregate_total_var ( prop ) . getInfo ())
print ( 'Summary stats of property values:' )
pprint ( col . aggregate_stats ( prop ) . getInfo ())
# Note that if the property is formatted as a string, min and max will
# respectively return the first and last values according to alphanumeric
# order of the property values.
prop_string = 'LANDSAT_SCENE_ID'
print ( 'List of property values (string):' ,
col . aggregate_array ( prop_string ) . getInfo ())
print ( 'Min of property values (string):' ,
col . aggregate_min ( prop_string ) . getInfo ())
print ( 'Max of property values (string):' ,
col . aggregate_max ( prop_string ) . getInfo ())
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Salvo que se indique lo contrario, el contenido de esta página está sujeto a la licencia Atribución 4.0 de Creative Commons , y los ejemplos de código están sujetos a la licencia Apache 2.0 . Para obtener más información, consulta las políticas del sitio de Google Developers . Java es una marca registrada de Oracle o sus afiliados.
Última actualización: 2025-07-26 (UTC)
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[[["Fácil de comprender","easyToUnderstand","thumb-up"],["Resolvió mi problema","solvedMyProblem","thumb-up"],["Otro","otherUp","thumb-up"]],[["Falta la información que necesito","missingTheInformationINeed","thumb-down"],["Muy complicado o demasiados pasos","tooComplicatedTooManySteps","thumb-down"],["Desactualizado","outOfDate","thumb-down"],["Problema de traducción","translationIssue","thumb-down"],["Problema con las muestras o los códigos","samplesCodeIssue","thumb-down"],["Otro","otherDown","thumb-down"]],["Última actualización: 2025-07-26 (UTC)"],[[["`aggregate_sample_var` calculates the sample variance of a specified property across an ImageCollection."],["It operates on a given property within each image of the collection."],["The result is a single number representing the sample variance of the chosen property's values."],["This function is part of a suite of aggregation methods that can provide various statistics about ImageCollection properties."]]],["The provided code demonstrates how to use `aggregate_*` functions on an `ImageCollection` to derive information about a specified property. Actions include listing all property values, getting counts, finding the first element's property value, creating histograms, and calculating statistical measures like min, max, mean, sum, product, standard deviation, and variance. These methods work on numeric properties, while string property methods are restricted to min and max (alphanumeric order).\n"]]