ee.Classifier.minimumDistance

Crée un classificateur de distance minimale pour la métrique de distance donnée. En mode CLASSIFICATION, la classe la plus proche est renvoyée. En mode RÉGRESSION, la distance au centre de classe le plus proche est renvoyée. En mode RAW, la distance à chaque centre de classe est renvoyée.

UtilisationRenvoie
ee.Classifier.minimumDistance(metric, kNearest)Classificateur
ArgumentTypeDétails
metricChaîne, valeur par défaut: "euclidean"Métrique de distance à utiliser. Les options sont les suivantes :
  • "euclidean" (euclidienne) : distance euclidienne par rapport à la moyenne de la classe non normalisée.
  • "cosine" : angle spectral de la moyenne de classe non normalisée.
  • "mahalanobis" : distance de Mahalanobis par rapport à la moyenne de la classe.
  • "manhattan" : distance de Manhattan par rapport à la moyenne de la classe non normalisée.
kNearestEntier, valeur par défaut: 1Si la valeur est supérieure à 1, le résultat contient un tableau des k voisins les plus proches ou des distances, en fonction du paramètre du mode de sortie. Si kNearest est supérieur au nombre total de classes, il est défini sur le nombre de classes.

Exemples

Éditeur de code (JavaScript)

// A Sentinel-2 surface reflectance image, reflectance bands selected,
// serves as the source for training and prediction in this contrived example.
var img = ee.Image('COPERNICUS/S2_SR/20210109T185751_20210109T185931_T10SEG')
              .select('B.*');

// ESA WorldCover land cover map, used as label source in classifier training.
var lc = ee.Image('ESA/WorldCover/v100/2020');

// Remap the land cover class values to a 0-based sequential series.
var classValues = [10, 20, 30, 40, 50, 60, 70, 80, 90, 95, 100];
var remapValues = ee.List.sequence(0, 10);
var label = 'lc';
lc = lc.remap(classValues, remapValues).rename(label).toByte();

// Add land cover as a band of the reflectance image and sample 100 pixels at
// 10 m scale from each land cover class within a region of interest.
var roi = ee.Geometry.Rectangle(-122.347, 37.743, -122.024, 37.838);
var sample = img.addBands(lc).stratifiedSample({
  numPoints: 100,
  classBand: label,
  region: roi,
  scale: 10,
  geometries: true
});

// Add a random value field to the sample and use it to approximately split 80%
// of the features into a training set and 20% into a validation set.
sample = sample.randomColumn();
var trainingSample = sample.filter('random <= 0.8');
var validationSample = sample.filter('random > 0.8');

// Train a minimum distance classifier (Mahalanobis distance metric) from
// the training sample.
var trainedClassifier = ee.Classifier.minimumDistance('mahalanobis').train({
  features: trainingSample,
  classProperty: label,
  inputProperties: img.bandNames()
});

// Get information about the trained classifier.
print('Results of trained classifier', trainedClassifier.explain());

// Get a confusion matrix and overall accuracy for the training sample.
var trainAccuracy = trainedClassifier.confusionMatrix();
print('Training error matrix', trainAccuracy);
print('Training overall accuracy', trainAccuracy.accuracy());

// Get a confusion matrix and overall accuracy for the validation sample.
validationSample = validationSample.classify(trainedClassifier);
var validationAccuracy = validationSample.errorMatrix(label, 'classification');
print('Validation error matrix', validationAccuracy);
print('Validation accuracy', validationAccuracy.accuracy());

// Classify the reflectance image from the trained classifier.
var imgClassified = img.classify(trainedClassifier);

// Add the layers to the map.
var classVis = {
  min: 0,
  max: 10,
  palette: ['006400' ,'ffbb22', 'ffff4c', 'f096ff', 'fa0000', 'b4b4b4',
            'f0f0f0', '0064c8', '0096a0', '00cf75', 'fae6a0']
};
Map.setCenter(-122.184, 37.796, 12);
Map.addLayer(img, {bands: ['B11', 'B8', 'B3'], min: 100, max: 3500}, 'img');
Map.addLayer(lc, classVis, 'lc');
Map.addLayer(imgClassified, classVis, 'Classified');
Map.addLayer(roi, {color: 'white'}, 'ROI', false, 0.5);
Map.addLayer(trainingSample, {color: 'black'}, 'Training sample', false);
Map.addLayer(validationSample, {color: 'white'}, 'Validation sample', false);

Configuration de Python

Consultez la page Environnement Python pour en savoir plus sur l'API Python et l'utilisation de geemap pour le développement interactif.

import ee
import geemap.core as geemap

Colab (Python)

# A Sentinel-2 surface reflectance image, reflectance bands selected,
# serves as the source for training and prediction in this contrived example.
img = ee.Image(
    'COPERNICUS/S2_SR/20210109T185751_20210109T185931_T10SEG'
).select('B.*')

# ESA WorldCover land cover map, used as label source in classifier training.
lc = ee.Image('ESA/WorldCover/v100/2020')

# Remap the land cover class values to a 0-based sequential series.
class_values = [10, 20, 30, 40, 50, 60, 70, 80, 90, 95, 100]
remap_values = ee.List.sequence(0, 10)
label = 'lc'
lc = lc.remap(class_values, remap_values).rename(label).toByte()

# Add land cover as a band of the reflectance image and sample 100 pixels at
# 10 m scale from each land cover class within a region of interest.
roi = ee.Geometry.Rectangle(-122.347, 37.743, -122.024, 37.838)
sample = img.addBands(lc).stratifiedSample(
    numPoints=100, classBand=label, region=roi, scale=10, geometries=True
)

# Add a random value field to the sample and use it to approximately split 80%
# of the features into a training set and 20% into a validation set.
sample = sample.randomColumn()
training_sample = sample.filter('random <= 0.8')
validation_sample = sample.filter('random > 0.8')

# Train a minimum distance classifier (Mahalanobis distance metric) from
# the training sample.
trained_classifier = ee.Classifier.minimumDistance('mahalanobis').train(
    features=training_sample,
    classProperty=label,
    inputProperties=img.bandNames(),
)

# Get information about the trained classifier.
display('Results of trained classifier', trained_classifier.explain())

# Get a confusion matrix and overall accuracy for the training sample.
train_accuracy = trained_classifier.confusionMatrix()
display('Training error matrix', train_accuracy)
display('Training overall accuracy', train_accuracy.accuracy())

# Get a confusion matrix and overall accuracy for the validation sample.
validation_sample = validation_sample.classify(trained_classifier)
validation_accuracy = validation_sample.errorMatrix(label, 'classification')
display('Validation error matrix', validation_accuracy)
display('Validation accuracy', validation_accuracy.accuracy())

# Classify the reflectance image from the trained classifier.
img_classified = img.classify(trained_classifier)

# Add the layers to the map.
class_vis = {
    'min': 0,
    'max': 10,
    'palette': [
        '006400',
        'ffbb22',
        'ffff4c',
        'f096ff',
        'fa0000',
        'b4b4b4',
        'f0f0f0',
        '0064c8',
        '0096a0',
        '00cf75',
        'fae6a0',
    ],
}
m = geemap.Map()
m.set_center(-122.184, 37.796, 12)
m.add_layer(
    img, {'bands': ['B11', 'B8', 'B3'], 'min': 100, 'max': 3500}, 'img'
)
m.add_layer(lc, class_vis, 'lc')
m.add_layer(img_classified, class_vis, 'Classified')
m.add_layer(roi, {'color': 'white'}, 'ROI', False, 0.5)
m.add_layer(training_sample, {'color': 'black'}, 'Training sample', False)
m.add_layer(
    validation_sample, {'color': 'white'}, 'Validation sample', False
)
m