Annuncio: tutti i progetti non commerciali registrati per l'utilizzo di Earth Engine prima del
15 aprile 2025 devono
verificare l'idoneità non commerciale per mantenere l'accesso. Se non hai eseguito la verifica entro il 26 settembre 2025, il tuo accesso potrebbe essere sospeso.
ee.ImageCollection.fromImages
Mantieni tutto organizzato con le raccolte
Salva e classifica i contenuti in base alle tue preferenze.
Restituisce la raccolta di immagini contenente le immagini specificate.
| Utilizzo | Resi |
|---|
ee.ImageCollection.fromImages(images) | ImageCollection |
| Argomento | Tipo | Dettagli |
|---|
images | Elenco | Le immagini da includere nella raccolta. |
Esempi
Editor di codice (JavaScript)
// A series of images.
var img1 = ee.Image(0);
var img2 = ee.Image(1);
var img3 = ee.Image(2);
// Convert the list of images into an image collection.
var col = ee.ImageCollection.fromImages([img1, img2, img3]);
print('Collection from list of images', col);
// The ee.ImageCollection.fromImages function is intended to coerce the image
// list to a collection when the list is an ambiguous, computed object fetched
// from the properties of a server-side object. For instance, a list
// of images retrieved from a ee.Feature property. Here, we set an image
// list as a property of a feature, retrieve it, and convert it to
// a collection. Notice that the ee.ImageCollection constructor fails to coerce
// the image list to a collection, but ee.ImageCollection.fromImages does.
var feature = ee.Feature(null).set('img_list', [img1, img2, img3]);
var ambiguousImgList = feature.get('img_list');
print('Coerced to collection', ee.ImageCollection.fromImages(ambiguousImgList));
print('NOT coerced to collection', ee.ImageCollection(ambiguousImgList));
// A common use case is coercing an image list from a saveAll join to a
// image collection, like in this example of building a collection of mean
// annual NDVI images from a MODIS collection.
var modisCol = ee.ImageCollection('MODIS/006/MOD13A2')
.filterDate('2017', '2021')
.select('NDVI')
.map(function(img) {return img.set('year', img.date().get('year'))});
var distinctYearCol = modisCol.distinct('year');
var joinedCol = ee.Join.saveAll('img_list').apply({
primary: distinctYearCol,
secondary: modisCol,
condition: ee.Filter.equals({'leftField': 'year', 'rightField': 'year'})
});
var annualNdviMean = joinedCol.map(function(img) {
return ee.ImageCollection.fromImages(img.get('img_list')).mean()
.copyProperties(img, ['year']);
});
print('Mean annual NDVI collection', annualNdviMean);
Configurazione di Python
Consulta la pagina
Ambiente Python per informazioni sull'API Python e sull'utilizzo di
geemap per lo sviluppo interattivo.
import ee
import geemap.core as geemap
Colab (Python)
# A series of images.
img1 = ee.Image(0)
img2 = ee.Image(1)
img3 = ee.Image(2)
# Convert the list of images into an image collection.
col = ee.ImageCollection.fromImages([img1, img2, img3])
print('Collection from list of images:', col.getInfo())
# The ee.ImageCollection.fromImages function is intended to coerce the image
# list to a collection when the list is an ambiguous, computed object fetched
# from the properties of a server-side object. For instance, a list
# of images retrieved from a ee.Feature property. Here, we set an image
# list as a property of a feature, retrieve it, and convert it to
# a collection. Notice that the ee.ImageCollection constructor fails to coerce
# the image list to a collection, but ee.ImageCollection.fromImages does.
feature = ee.Feature(None).set('img_list', [img1, img2, img3])
ambiguous_img_list = feature.get('img_list')
print(
'Coerced to collection:',
ee.ImageCollection.fromImages(ambiguous_img_list).getInfo(),
)
print(
'NOT coerced to collection:',
ee.ImageCollection(ambiguous_img_list).getInfo(),
)
# A common use case is coercing an image list from a saveAll join to a
# image collection, like in this example of building a collection of mean
# annual NDVI images from a MODIS collection.
modis_col = (
ee.ImageCollection('MODIS/006/MOD13A2')
.filterDate('2017', '2021')
.select('NDVI')
.map(lambda img: img.set('year', img.date().get('year')))
)
distinct_year_col = modis_col.distinct('year')
joined_col = ee.Join.saveAll('img_list').apply(
primary=distinct_year_col,
secondary=modis_col,
condition=ee.Filter.equals(leftField='year', rightField='year'),
)
annual_ndvi_mean = joined_col.map(
lambda img: ee.ImageCollection.fromImages(img.get('img_list'))
.mean()
.copyProperties(img, ['year'])
)
print('Mean annual NDVI collection:', annual_ndvi_mean.getInfo())
Salvo quando diversamente specificato, i contenuti di questa pagina sono concessi in base alla licenza Creative Commons Attribution 4.0, mentre gli esempi di codice sono concessi in base alla licenza Apache 2.0. Per ulteriori dettagli, consulta le norme del sito di Google Developers. Java è un marchio registrato di Oracle e/o delle sue consociate.
Ultimo aggiornamento 2025-07-26 UTC.
[null,null,["Ultimo aggiornamento 2025-07-26 UTC."],[],["`ee.ImageCollection.fromImages(images)` converts a list of images into an ImageCollection. This function is crucial for handling ambiguous, computed image lists, like those retrieved from server-side object properties. It successfully coerces image lists into collections, unlike the standard `ee.ImageCollection` constructor. A common use case is processing lists generated by `ee.Join.saveAll`, demonstrated by building a collection of mean annual NDVI images from MODIS data, efficiently grouping images and calculating yearly averages.\n"]]