Classification and Regression Trees (CART): Machine learning technique in Google Earth Engine.
In this tutorial learn how to:
1. Define sample points to train a classifier.
2. Classify the training points into different classes (Urban, Vegetation, Water, and Other Land)
3. Merge the four geometry layers into a single Feature Collection.
4. Sample the composite to generate training data. Note that the class label is stored in the ‘landcover’ property.
5. Train a CART classifier.
6. Do a Supervised Classification.
7. Split the data into 70% training, 30% testing. and classify the cloud-free composite.
8. Print the confusion matrix.
9. Determine the Land Cover Change between 2001 and 2019.
code link:
1. For Landsat 7 & 8 Collection 1 Tier 1 TOA Reflectance:
drive.google.c...
2. For Landsat 7 Collection 1 Tier 1 Raw Scenes:
docs.google.co...
3. For Title and Legends:
drive.google.c...
Негізгі бет Land Use Land Cover Change (LULCC) between 2001 and 2019 in Google Earth Engine (Study Area: Dharan)
Пікірлер: 18