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IMAGE CLASSIFICATION BASICS With support from: NSF DUE-0903270 in partnership with: George McLeod Prepared by: Geospatial Technician Education Through Virginia’s Community Colleges (GTEVCC)

Image Classification Basics

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Image Classification Basics. Prepared by:. George McLeod. With support from:. NSF DUE-0903270. in partnership with:. Geospatial Technician Education Through Virginia’s Community Colleges (GTEVCC). Image Analysis. - PowerPoint PPT Presentation

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Page 1: Image Classification Basics

IMAGE CLASSIFICATIONBASICS

With support from:

NSF DUE-0903270

in partnership with:

George McLeod

Prepared by:

Geospatial Technician Education Through Virginia’s Community Colleges (GTEVCC)

Page 2: Image Classification Basics

Image Analysis Satellite images capture light by sampling

over predetermined wavelength ranges which are referred to as “bands” or “channels”

To extract additional information from digital images use image processing techniques such as: False Color Composites, Image Ratios, and Classification (Supervised and Unsupervised)

Page 3: Image Classification Basics

Two Kinds of Classification Supervised Unsupervised

Image source: Dr. Ryan Jenson

Page 4: Image Classification Basics

Unsupervised Classification

Requires minimal amount of input from user Based solely on numerical information in the data Matched by the analyst to information classes

Pixels with similar digital numbers are grouped together into spectral classes using statistical procedures such as cluster analysis ISODATA

Iterative Self-Organizing Data Analysis Technique - Automated spectral clustering

User then identifies which class membership for each cluster

Page 5: Image Classification Basics

ISODATA

Page 6: Image Classification Basics

Supervised Classification User selects area in image that represent

each unique class (“Training” sites) Pixel values for each band are recorded for

class sample set Computer matches rest of pixels to user

defined classes based on closest distance in multi-dimensional image space

This outputs a classified image

Page 7: Image Classification Basics

Supervised Classification – Training Sites

Page 8: Image Classification Basics

Supervised Classification – Signature Means

Page 9: Image Classification Basics

Supervised Classification

Image source: Dr. Ryan Jenson

Page 10: Image Classification Basics

Training Site Selection Used in supervised classification Homogeneous areas of land

cover Information derived from:

field studies,thematic maps,other areas of knowledge

Page 11: Image Classification Basics

Training Site Selection (Cont.)

Each site should have at least 10 times ‘n’ number of pixels, where n is equal to the number of bands used in the classification.

Map digitizing On-screen digitizing

Page 12: Image Classification Basics

Supervised Classification Algorithms

Minimum Distance to the Means

Maximum Likelihood

Page 13: Image Classification Basics

Minimum Distance to Means

The data points for DNs from two bands are dots; the mean for each clustered data set are the squares. For point 1, an unknown, the shortest straight-line distance to the several means is to the class "heather". Point 1, then, is assigned to this category. Point 2 is slightly closer to the "soil" category but lies within the edge of the "urban" spread. Here, the classification seems ambiguous. By the minimum distance rule, it would go to "soil" but this may be erroneous ("urban" would have been a greater likelihood). Point 3 is not near any of the class DN clusters, but is about equidistance between "urban", "water", "forest", and "heather". If one plays the odds, "urban" is just a tad closer to 3; but this situation indicates how misclassification might occur.

Page 14: Image Classification Basics

Maximum Likelihood

Not shown is the fact that inside each ellipse are contours that indicate the degree of probability. Associated with each ellipse is a separate plot that expresses a statistical surface (bell-shaped in three dimensions) called probability density functions. Using these functions, which relate to the contours, a likelihood that any unknown point U is most probably associated with some one ellipse is determined. A Bayesian Classifier is a special case in which the likely occurrence of each class (common to rare) is assessed and integrated into the decision making.

Page 15: Image Classification Basics

Supervised vs. Unsupervised

Page 16: Image Classification Basics

Land Cover/Land Use Change Analysis

Growth or shrinkage of urban areas Deforestation of tropic areas Fire and burn damage Damage done by hurricanes, earthquakes, and tornados

Page 17: Image Classification Basics

Land Cover Classification

Phragmites Autralis - 1999

Phragmites Autralis - 2002

Page 18: Image Classification Basics

Acquiring Satellite Data http://glovis.usgs.gov/ USGS data viewer http://edcsns17.cr.usgs.gov/NewEarthExpl

orer/ USGS New Earth Explorer

http://www.landcover.org/index.shtml Global Landcover facility at the University of Maryland

http://www.terraserver.com/view.asp Terraserver

http://www.ncdc.noaa.gov/nexradinv/index.jsp NOAA NexRad Radar Data