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Image Classification.

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Presentation on theme: "Image Classification."— Presentation transcript:

1 Image Classification

2 Assignment تطبيقات الاستشعار عن بعد في الجيولوجيا

3 Land classification Aims at label each pixel in a scene to a specific land cover types Pixels can then be either correctly classified, incorrectly classified or unclassified Two main type of classification Unsupervised Supervised

4 Unsupervised classification
No previous knowledge assumed about the data Tries to spectrally separate the pixels User has controls over No of classes No of iterations

5 Supervised Image Classification
An image classification procedure that requires interaction with the analyst

6 1. General Procedures Training stage  - The analyst identifies the representative training areas (training set) and develops summary statistics for each category Classification stage  - Each pixel is categorized into a land cover class  Output stage  - The classified image is presented in GIS or other forms

7 Supervised classification

8 Supervised classification

9

10 Training

11 Parallelepiped classifier
Classifiers Minimum distance classifier Parallelepiped classifier

12 1. Minimum Distance Classifier
Calculates mean of the spectral values for the training set in each band and for each category  Measures the distance from a pixel of unknown identify to the mean of each category  Assigns the pixel to the category with the shortest distance  Assigns a pixel as "unknown" if the pixel is beyond the distances defined by the analyst

13 2. Minimum Distance Classifier
(40,60) 0,0

14 1. Minimum Distance Classifier

15 Minimum Distance Classifier
Advantage  computationally simple and fast  Disadvantage  insensitive to differences in variance among categories

16 2. Parallelepiped Classifier
Forms a decision region by the maximum and minimum values of the training set in each band and for each category (class)  Assigns a pixel to the category where the pixel falls in  Assigns a pixel as "unknown" if it falls outside of all regions  

17 2. Parallelepiped Classifier

18 Parallelepiped Classifier
Advantage  computationally simple and fast   takes differences in variance into account Disadvantage  performs poorly when the regions overlap because of high correlation between categories (high covariance)  

19 Parallelepiped Classifier
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20 Parallelepiped Classifier


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