Multispectral Classification Flashcards
Multispectral Image classification
pixels assigned to classes
data from a spectral band for each pixel
group together pixels with similar data and put them in a class
these classes will form regions on the image of pixels with similar attributes
Multi-spectral Classification: unsupervised mode advantage
-Requires no prior knowledge of area
-Automatic
–no human error
-Small, unique areas are recognised as distinct units
Multi-spectral Classification: unsupervised mode disadvantage
- Classes may not be useful to geologist
- Limited control by analyst
- Will only work for that image
- An adjacent image will generate different classes that can’t be matched
what is unsupervised mode
plot reflectance in a channels against reflectance in the other channel
2 channels = 2d space
3 channels = 3d space
7 channels = 7d space
how does person use unsupervised mode
User selects number of classes they want (here 2)
- Computer looks for that number of clusters in data…
- … then decides which cluster a pixel falls in based on spectra
- … then assigns each class a colour and plots classified image
Multi-spectral Classification: supervised mode advantage
- User control over classes
- Classes tailored to specific purpose
- Tied to known identity
- Do not have to match categories to ground truth as with unsupervised mode (as inherently done)
- Check of validity as training areas should be properly classified in final image
Multi-spectral Classification: supervised mode disadvantage
- User classes may not match natural classes so may not be distinct in multispectral space (e.g. Rhyolite-Microgranite-Granite)
- Training areas might actually be quite diverse a class may cover a wide range of sub-types (e.g. Sandstone)
- Training data may not represent the conditions across the whole image
- Setting up / verifying training areas time-consuming
- May not recognise special or unique categories not represented in the training data
what is supervised mode
samples of known identity (pixels already assigned to a class) to classify other pixels
Samples of known identity are from training areas where the ground is known