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ee.ImageCollection.fromImages
使用集合让一切井井有条
根据您的偏好保存内容并对其进行分类。
返回包含指定图片集的图片集。
用法 返回 ee.ImageCollection.fromImages(images)ImageCollection
参数 类型 详细信息 images列表 要包含在集合中的图片。
示例
代码编辑器 (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/061/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 );
Python 设置
如需了解 Python API 和如何使用 geemap 进行交互式开发,请参阅
Python 环境 页面。
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 ])
display ( '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.
feature = ee . Feature ( None ) . set ( 'img_list' , [ img1 , img2 , img3 ])
ambiguous_img_list = feature . get ( 'img_list' )
display (
'Coerced to collection:' ,
ee . ImageCollection . fromImages ( ambiguous_img_list ),
)
display (
'NOT coerced to collection:' ,
ee . ImageCollection ( ambiguous_img_list ),
)
# 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/061/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' ])
)
display ( 'Mean annual NDVI collection:' , annual_ndvi_mean )
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最后更新时间 (UTC):2025-11-22。
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[[["易于理解","easyToUnderstand","thumb-up"],["解决了我的问题","solvedMyProblem","thumb-up"],["其他","otherUp","thumb-up"]],[["没有我需要的信息","missingTheInformationINeed","thumb-down"],["太复杂/步骤太多","tooComplicatedTooManySteps","thumb-down"],["内容需要更新","outOfDate","thumb-down"],["翻译问题","translationIssue","thumb-down"],["示例/代码问题","samplesCodeIssue","thumb-down"],["其他","otherDown","thumb-down"]],["最后更新时间 (UTC):2025-11-22。"],[],["`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"]]