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Remote Sensing Classification Accuracy

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Remote Sensing Classification Accuracy 1. Select Test Areas Selecte test areas in an image to evaluate the accuracy of a classification Test areas should be ... – PowerPoint PPT presentation

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Title: Remote Sensing Classification Accuracy


1
Remote SensingClassification Accuracy
2
1. Select Test Areas
  • Selecte test areas in an image to evaluate the
    accuracy of a classification
  • Test areas should be representative categorically
    and geographically
  • Sampling methods uniform wall-to-wall, random,
    stratified random sampling        
  • Sample size 50 - 100 pixels each category

3
http//aria.arizona.edu/slg/Vandriel.ppt
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2. Error Assessment
  • A classification is not complete until its
    accuracy is assessed
  • Error matrix
  • KHAT statistics

6
Error Matrix
  • Also called confusion matrix and contingency
    table        
  • Compares the ground truth and the results of the
    classification for the test areas
  • Can be used to evaluate the result of
    classifying the training set pixels and the
    results of classifying the actual full-scene

7
Error Matrix
  •                 

Diagonal cells are correctly classified pixels
                            correctly
classified pixels 1672 Overall accuracy
  ------------------------------- -------
84                               total pixels
evaluated 1992
8
Error Matrix
  •                 

In this case, the non-diagonal column cells are
omission errors e.g. omission error for forest
43/356 12 The non-diagonal row cells are
commission errors e.g. commission error for corn
117/459 25
9
Error Matrix
  •                 

                                  correctly
classified in each category producer's accuracy
  ---------------------------------------------- 
                          the total pixels used
in the category (col total) Omission error 1
(100) - producer's accuracy
10
Error Matrix
  •                 

                                  correctly
classified in each category user's accuracy  
--------------------------------------------------
-----                         the total pixels
used in the category (row total) Commission
error 1 (100) - user's accuracy
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KHAT Statistics
  • A measure of the difference between the actual
    agreement between reference data and the results
    of classification, and the chance agreement
    between the reference data and a random
    classifier

14
KHAT Statistics
  •       observed accuracy - chance agreement k
      -----------------------------------------------
    ---              1 - chance agreement
  • The KHAT value usually ranges from 0 to 1
  • 0 indicates the classification is not any better
    than a random assignment of pixels
  • 1 indicates that the classification is 100
    improvement from random assignment

15
KHAT Statistics
  •             r          r        N S xii - 
    S (xi    xi)          i1       i1 k
    -----------------------------------
                        r            N2  -  S (xi 
      xi)                   i1
  • r - number of rows in the error matrix
  • xii - number of obs in row i and column i (the
    diagonal cells)
  • xi - total obs of row i
  • xi - total obs of column i
  • N - total of obs in the matrix

16
KHAT
17
KHAT Statistics
  • KHAT considers both omission and commission
    errors

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19
Readings
  • Chapter 7
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