image classification analysis and applications of remote sensing imagery instructor: dr. cheng-chien...
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Image ClassificationImage Classification
Analysis and applications of remote sensing imagery
Instructor: Dr. Cheng-Chien Liu
Department of Earth Sciences
National Cheng Kung University
Last updated: 24 May 2005
Chapter 5Chapter 5
IntroductionIntroduction
Overall objective of classificationOverall objective of classification• Automatically categorize all pixels in an image into land cover
classes or themes
Three pattern recognitionsThree pattern recognitions• Spectral pattern recognition emphasize in this chapter• Spatial pattern recognition• Temporal pattern recognition
Selection of classificationSelection of classification• No single “right” approach• Depend on
The nature of the data being analyzedThe computational resources availableThe intended application of the classified data
Supervised classificationSupervised classification
Fig 7.37Fig 7.37• A hypothetical example
Five bands: B, G, R, NIR, TIR,Six land cover types: water, sand, forest, urban, corn, hay
Three basic steps (Fig 7.38)Three basic steps (Fig 7.38)• Training stage
• Classification stage
• Output stage
Supervised classification (cont.)Supervised classification (cont.)
Classification stageClassification stage• Fig 7.39
Pixel observations from selected training sites plotted on scatter diagram
Use two bands for demonstration, can be applied to any band numberClouds of points multidimensional descriptions of the spectral
response patterns of each category of cover type to be interpreted
• Minimum-Distance-to-Mean classifierFig 7.40
Mean vector for each category Pt 1 Corn Pt 2 Sand ?!!
Advantage: mathematically simple and computationally efficientDisadvantage: insensitive to different degrees of variance in the spectral
response dataNot widely used if the spectral classes are close to one another in the
measurement space and have high variance
Supervised classification (cont.)Supervised classification (cont.)
Classification stage (cont.)Classification stage (cont.)• Parallelepiped classifier
Fig 7.41 Range for each category Pt 1 Hay ?!! Pt 2 Urban
Advantage: mathematically simple and computationally efficient
Disadvantage: confuse if correlation or high covariance are poorly described by the rectangular decision regions
Positive covariance: Corn, Hay, Forest Negative covariance: Water
Alleviate by use of stepped decision region boundaries (Fig 7.42)
Supervised classification (cont.)Supervised classification (cont.)
Classification stage (cont.)Classification stage (cont.)• Gaussian maximum likelihood classifier
Assumption: the distribution of the cloud of points is Gaussian distribution
Probability density functions mean vector and covariance matrix (Fig. 7.43)
Fig 7.44: Ellipsoidal equiprobability contoursBayesian classifier
A priori probability (anticipated likelihood of occurrence) Two weighting factors If suitable data exist for these factors, the Bayesian implementation of the classifier is
preferableDisadvantage: computational efficiency
Look-up table approach Reduce the dimensionality (principal or canonical components transform) Simplify classification computation by separate certain classes a prior
Water is easier to separate by use of NIR/Red ratio
Supervised classification (cont.)Supervised classification (cont.)
Training stageTraining stage• Classification automatic work• Assembling the training data manual work
Both an art and a scienceSubstantial reference dataThorough knowledge of the geographic areaYou are what you eat!
Results of classification are what you train!
• Training dataBoth representative and complete
All spectral classes constituting each information class must be adequately represented in the training set statistics used to classify an image
e.g. water (turbid or clear) e.g. crop (date, type, soil moisture, …)
It is common to acquire data from 100+ training areas to represent the spectral variability
Supervised classification (cont.)Supervised classification (cont.)
Training stage (cont.)Training stage (cont.)• Training area
Delineate boundaries (Fig 7.45) Carefully located boundaries no edge pixels
Seed pixel Choose seed pixel statistically based criteria contiguous pixels cluster
• Training pixelsNumber
At least n+1 pixels for n spectral bands In practice, 10n to 100n pixels is used
Dispersion representative
• Training set refinementMake sure the sample size is sufficient
Assess the overall quality Check if all data sets are normally distributed and spectrally pure
Avoid redundancy Delete or merge
Supervised classification (cont.)Supervised classification (cont.)
Training stage (cont.)Training stage (cont.)• Training set refinement process
Graphical representation of the spectral response patterns Fig 7.46: Histograms for data points included in the training areas of “hay”
Visual check on the normality of the spectral response distribution Two subclasses: normal and bimodal
Fig 7.47: Coincident spectral plot Corn/hay overlap for all bands Band 3 and 5 for hay/corn separation (use scatter plot)
Fig 7.48: SPOT HRV multi-spectral images Fig 7.49 scatter plot of band 1 versus band 2 Fig 7.50 scatter plot of band 2 versus band 3 less correlated adequate
Quantitative expressions of category separation Transform divergence: a covariance-weighted distance between category means
Table 7.1: Portion of a divergence matrix (<1500 spectrally similar classes)
Supervised classification (cont.)Supervised classification (cont.)
Training stage (cont.)Training stage (cont.)• Training set refinement process (cont.)
Self-classification of training set data Error matrix for training area not for the test area or the overall scene
Tell us how well the classifier can classify the training areas and nothing more Overall accuracy is perform after the classification and output stage
Interactive preliminary classification Plate 29: sample interactive preliminary classification procedure
Representative subscene classification Complete the classification for the test area verify and improve
Summary Revise with merger, deletion and addition to form the final set of statistics used in
classification Accept misclassification accuracy of a class that occurs rarely in the scene to preserve the
accuracy over extensive areas Alternative methods for separating two spectrally similar classes GIS data, visual
interpretation, field check, multi-temporal or spatial pattern recognition procedures, …
Supervised classification (cont.)Supervised classification (cont.)
Training stage (cont.)Training stage (cont.)• Implementation region of interest (ROI)
• Three sources of ROIManually from an image using the mouseFrom pixel scatter plotsFrom vector layers
Exercise 1Exercise 1
Quick classification using interactive 2-D Quick classification using interactive 2-D scatter plotsscatter plots• Rationale
Sufficient information to determine appropriate training areas may not exist
2-D scatter plot first step in determine training set
• Data: ca_coast.dat (TMS data)• Create 2D scatter plot
Tool 2-D Scatter Plots…The adjacent bands are usually highly correlatedChoose band 3 for X-axis and band 8 for Y-axisCheck dancing pixels
hold the left-button in the image window hold the right-button in the image window
Option Density slice
Exercise 1Exercise 1
Quick classification using interactive 2-D Quick classification using interactive 2-D scatter plotsscatter plots• Rationale
Sufficient information to determine appropriate training areas may not exist
2-D scatter plot first step in determine training set
• Data: ca_coast.dat (TMS data)• Create 2D scatter plot
Tool 2-D Scatter Plots…The adjacent bands are usually highly correlatedChoose band 3 for X-axis and band 8 for Y-axisCheck dancing pixels
hold the left-button in the image window hold the right-button in the image window
Option Density slice
Self test 1Self test 1
File: File: ca_coast.datca_coast.dat• Use 2D scatter plot to define 5 ROIs
Note:Note:• Selection of bands for 2D scatter plot• The least number of pixels required for each
class• Dispersion of ROIs• Give each ROI an appropriate name• Output the ROIs into a file
Exercise 2Exercise 2
Perform classificationPerform classification• File: ca_coast.dat• Use the same ROIs that were defined earlier• Classification method:
Maximum likelihood methodMinimum distance method
• Try various threshold value(s)• Use Preview function
Change the extent by selecting the Change View button
• Examine the rule image
Exercise 3Exercise 3
Examine class imagesExamine class images• Load results of classification in previous exercise• Link the displays and examine the differences• Answer the following questions
Regions of the same classificationRegions of the different classificationWhich is betterDo your ROIs seem to be appropriate?How to improve the classification by changing the ROIs
• Check the header and data type of the classified result• Change the class color mapping
Exercise 4Exercise 4
Examine rule imagesExamine rule images• Display rule images in previous exercise
• Link the displays and examine the differences
• Plot the z profile for each rule image
• Move to an arbitrary pixel, check the value and determine which class this pixel should be
Exercise 5Exercise 5
Perform post classification using the rule Perform post classification using the rule classifierclassifier• Classification Post Classification Rule Classifier• File: dist_rule.img• Change the thresholds and press Quick Apply• Examine the result• Examine the rule images histogram to determine the
appropriate threshold for each classPress the Hist button for open ocean classSet a threshold to encompass the first peak of the bimodelRepeat for the other classes
Exercise 6Exercise 6
Overlay classesOverlay classes• Display band 7 of ca_coast.dat in gray• Overlay Classification• File: max_class.img• Interactive Class Tool dialog
Turn on and off class(es)Options Class distributionChange active classOptions Associated stats data fileOptions Stats for all classes
Examine the min, max, mean, standard deviation for each class
• Display band 7 of ca_coast.dat in a new window• Overlay dist_class.img• Link two displays and examine the differences
Exercise 6 (cont.)Exercise 6 (cont.)
Overlay classes (cont.)Overlay classes (cont.)• Repeat setting the Interactive Class Tool dialog for
the new file: dist_class.imgTurn on and off class(es)Options Class distributionChange active classOptions Associated stats data fileOptions Stats for all classes
Examine the min, max, mean, standard deviation for each class
• Compare the class distribution and stats plots• Editing pixels of classification using the Interactive
Class Tool
Exercise 7Exercise 7
Convert classes to ROIsConvert classes to ROIs• Using Band Threshold to ROI tool
Overlay Regions of InterestOptions Band Threshold to ROI
• Options report area of ROIs
Unsupervised classificationUnsupervised classification
Unsupervised Unsupervised supervisedsupervised• Supervised define useful information
categories examine their spectral separability
• Unsupervised determine spectral classes define their informational utility
Illustration: Fig 7.51Illustration: Fig 7.51• Advantage: the spectral classes are found
automatically (e.g. stressed class)
Unsupervised classification (cont.)Unsupervised classification (cont.)
Clustering algorithmsClustering algorithms• K-means
Locate centers of seed clusters assign all pixels to the cluster with the closest mean vector revise mean vectors for each clusters reclassify the image iterative until there is no significant change
• Iterative self-organizing data analysis (ISODATA)Permit the number of clusters to change from on iteration to the next by
Merging: distance < some predefined minimum distance Splitting: standard deviation > some predefined maximum distance Deleting: pixel number in a cluster < some specified minimum number
Table 7.2Table 7.2• Outcome 1: ideal result• Outcome 2: subclasses classes• Outcome 3: a more troublesome result
The information categories is spectrally similar and cannot be differentiated in the given data set
Exercise 8Exercise 8
Unsupervised classificationUnsupervised classification• File: ca_coast.dat
• Method: K-means and ISODATA
• Parameter:
• Overlay the result of classification onto the original true-color image
• Examine the result of classification
• Save both results for exercise 10
Exercise 8 (cont.)Exercise 8 (cont.)
Hybrid classificationHybrid classification
Unsupervised training areasUnsupervised training areas• Image sub-areas chosen intentionally to be quite different from
supervised training areasSupervised regions of homogeneous cover typeUnsupervised contain numerous cover types at various locations throughout
the scene To identify the spectral classes
Guided clusteringGuided clustering• Delineate training areas for class X• Cluster all class X into spectral subclasses X1, X2, …• Merge or delete class X signatures• Repeat for all classes• Examine all class signatures and merge/delete signatures• Perform maximum likelihood classification• Aggregate spectral subclasses
Classification of mixed pixelsClassification of mixed pixels
Mixed pixelsMixed pixels• IFOV includes more than one type/feature
Low resolution sensors more serious
Subpixel classificationSubpixel classification• Spectral mixture analysis
A deterministic method (not a statistical method)Pure reference spectral signatures
Measured in the lab, in the field, or from the image itself Endmembers
Basic assumption The spectral variation in an image is caused by mixtures of a limited number of surface materials Linear mixture satisfy two basic conditions simultaneously
The sum of the fractional proportions of all potential endmembers Fi = 1 The observed DN for each pixel B band B equations B+1 equations solve B+1 endmember fractions
Fig 7.52: example of a linear spectral mixture analysisDrawback: multiple scattering nonlinear mixturemodel
EDNFDNFDNFDN NN ,2,21,1 ...
Classification of mixed pixels (cont.)Classification of mixed pixels (cont.)
Subpixel classification (cont.)Subpixel classification (cont.)• Fuzzy classification
A given pixel may have partial membership in more than one category
Fuzzy clustering Conceptually similar to the K-means unsupervised classification approach Hard boundaries fuzzy regions
Membership grade
Fuzzy supervised classification A classified pixel is assigned a membership grade with respect to its
membership in each information class
Exercise 9Exercise 9
Linear spectral unmixingLinear spectral unmixing• File: ca_coast.dat• Display the image in true color• Set 5 ROIs, each has one pure pixel• Spectral mapping methods endmember
collection• Import five endmembers from ROIs• Algorithms Linear spectral unmixing• Set constrained• Apply and examine the results
The output stageThe output stage
Image classification Image classification output products output products end usersend users• Graphic products
Plate 30, Fig 3 of the paper “IKONOS imagery for resource management”
• Tabular data
• Digital information files
Postclassification smoothingPostclassification smoothing
Salt-and-pepper appearanceSalt-and-pepper appearance• Low-pass filter can not be used• Must operate on the basis of logical operations, rather than
simple arithmetic computations
Majority filterMajority filter• Fig 7.53
(a) original classification salt-and-pepper appearance(b) 3 x 3 pixel-majority filter(c) 5 x 5 pixel-majority filter
Imbedded in the algorithm of classificationImbedded in the algorithm of classification• Limited• Need the technique of spatial pattern recognition• Future development
Exercise 10Exercise 10
Postclassification smoothingPostclassification smoothing• File: results from exercise 8• Clump and Sieve
For generalizing classification images, Sieve is usually run first to remove the isolated pixels based on a size (number of pixels) threshold. Clump is run to add spatial coherency to existing classes by combining adjacent similar classified areas
Classification → Post Classification → Sieve ClassesClassification → Post Classification → Clump Classes
• Combine ClassesClassification → Post Classification → Combine Classes
Classification accuracy assessmentClassification accuracy assessment
SignificanceSignificance• A classification is not complete until its accuracy is assessed
Classification error matrixClassification error matrix• Error matrix (confusion matrix, contingency table)
Table 7.3Omission (exclusion) 漏授 (該有的沒有 )
Non-diagonal column elements (e.g. 16 sand pixels were omitted)Commission (inclusion) 誤授 (不該有的卻有 )
Non-diagonal raw elements (e.g. 38 urban pixels + 79 hay pixels were included in corn)Overall accuracyProducer’s accuracy 生產者準確度
Indicate how well training set pixels of the given cover type are classifiedUser’s accuracy 使用者準確度
Indicate the probability that a pixel classified into a given category actually represents that category on the ground
Training area accuracies are sometimes used in the literature as an indication of overall accuracy. They should not be!
Classification accuracy assessment Classification accuracy assessment (cont.)(cont.)
Sampling considerationsSampling considerations• Test area
Different and more extensive than training areaWithhold some training areas for postclassification accuracy assessmentBeing homogeneous, test areas might not provide a valid indication of
classification accuracy at the individual pixel level of land cover variability
• Wall-to-wall comparisonExpensiveDefeat the whole purpose of remote sensing
• Random samplingCollect large sample of randomly distributed points too expensive and
difficult e.g. 3/4 of Taiwan area is covered by The Central mountain
Only sample those pixels without influence of potential registration error Several pixels away from field boundaries
Stratified random sampling Each land cover category Stratum
Classification accuracy assessment Classification accuracy assessment (cont.)(cont.)
Sampling considerations (cont.)Sampling considerations (cont.)• Accomplishment of random sampling
Overlay the classified output data with a gridTest cells within the grid are selected randomly and groups of pixels
within the test cells are evaluated
• Sample unitIndividual pixels, clusters of pixels or polygons
• Sample numberGeneral area: 50 samples per categoryLarge area or more than 12 categories: 75 – 100 samples per categoryDepend on the variability of each category
Wetland need more samples than open water
Classification accuracy assessment Classification accuracy assessment (cont.)(cont.)
Evaluating classification error matricesEvaluating classification error matrices• Table 7.4: error matrix (randomly sampled
test)Producer’s accuracy for Forest 84% > overall accuracy
65% good for classify forest?!User’s accuracy for forest is only 60%Only good for classify water
Self test 2Self test 2
Employ all methods and concepts of Employ all methods and concepts of classification that you have learned so classification that you have learned so far to classify the file far to classify the file ca_coast.dat ca_coast.dat carefully. The ground truths in the carefully. The ground truths in the validation region will be provided next validation region will be provided next week in the form of ROIs to assess your week in the form of ROIs to assess your result.result.
Tutorial: multispectral classificationTutorial: multispectral classification
Read imageRead image• File → Open Image File
Subdirectory: envidata File: can_tmr.imgRGB ColorBands 4, 3, and 2
• Review Image ColorsFalse color infrared photograph
Bright red areas → high infrared reflectance → healthy vegetation → under cultivation, or along rivers
Slightly darker red areas → native vegetation → coniferous trees Several distinct geologic and urbanization classes are also readily apparent as is urbanization
• Cursor Location/Value• Examine Spectral Plots
Tools → Profiles → Z Profile (Spectrum) Note the relations between image color and spectral shape Pay attention to the location of the image bands in the spectral profile, marked by the red, green, and
blue bars in the plot
Tutorial: multispectral classification Tutorial: multispectral classification (cont.)(cont.)
Unsupervised ClassificationUnsupervised Classification• Classification → Unsupervised → K-Means or IsoData• K-Means
Uses a cluster analysis approach which requires the analyst to select the number of clusters to be located in the data, arbitrarily locates this number of cluster centers, then iteratively repositions them until optimal spectral separability is achieved
Choose K-Means as the method, use all of the default values and click on OKReview the results contained in can_km.img.Experiment with different numbers of classes, change thresholds, standard
deviations, and maximum distance error values to determine their effect on the classification.
• IsodataCalculates class means evenly distributed in the data space and then iteratively
clusters the remaining pixels using minimum distance techniques. Each iteration recalculates means and reclassifies pixels with respect to the new means
Choose IsoData as the method, use all of the default values and click on OK, orReview the results contained in can_iso.img.
Tutorial: multispectral classification Tutorial: multispectral classification (cont.)(cont.)
Regions of Interest (ROI) Regions of Interest (ROI) • Select Training Sets Using Regions of Interest (ROI)• Restore Predefined ROIs
Choosing from the #1 Main Image menu bar Overlay → Region of Interest
Choose File → Restore ROIsFile: CLASSES.ROI
• Create Your Own ROIsOverlay → Region of InterestDraw a polygonFix the polygon by clicking the right mouse button a second timeNew RegionEdit
Tutorial: multispectral classification Tutorial: multispectral classification (cont.)(cont.)
Supervised ClassificationSupervised Classification• Supervised classification requires that the user
select training areas for use as the basis for classification
• Classification → Supervised → [method][method] is one of the supervised classification methods in
the pull-down menu (Parallelepiped, Minimum Distance, Mahalanobis Distance, Maximum Likelihood, Spectral Angle Mapper, Binary Encoding, or Neural Net). Use one of the two methods below for selecting training areas, also known as regions of interest (ROIs).
Tutorial: multispectral classification Tutorial: multispectral classification (cont.)(cont.)
Classical Supervised Multispectral ClassificationClassical Supervised Multispectral Classification• Parallelepiped
Uses a simple decision rule to classify multispectral data. The decision boundaries form an n-dimensional parallelepiped in the image data space. The dimensions of the parallelepiped are defined based upon a standard deviation threshold from the mean of each selected class
Pre-saved results are in the file can_pcls.img Perform your own classification using the CLASSES.ROI regions of interest
• Maximum Likelihood Assumes that the statistics for each class in each band are normally distributed Calculates the probability that a given pixel belongs to a specific class Unless a probability threshold is selected, all pixels are classified Each pixel is assigned to the class that has the highest probability
• Minimum Distance Uses the mean vectors of each ROI and calculates the Euclidean distance from each
unknown pixel to the mean vector for each class• Mahalanobis Distance
A direction sensitive distance classifier that uses statistics for each class Assumes all class covariances are equal and therefore is a faster method
Tutorial: multispectral classification Tutorial: multispectral classification (cont.)(cont.)
Spectral Classification MethodsSpectral Classification Methods• Developed specifically for use on Hyperspectral data,
but provide an alternative/improved method for classifying multispectral data
• The Endmember Collection DialogSpectral → Mapping Methods → Endmember Collection(Classification → Endmember Collection)Open File
File: can_tmr.img Endmember Collection: Parallel dialog
Algorithm → [method] [method] represents: Parallelepiped, Minimum Distance, Manlanahobis Distance,
Maximum Likelihood, Binary Encoding, and the Spectral Angle Mapper (SAM)
Tutorial: multispectral classification Tutorial: multispectral classification (cont.)(cont.)
Spectral Classification Methods (cont.)Spectral Classification Methods (cont.)• Binary Encoding Classification
Encodes the data and endmember spectra into 0s and 1s based on whether a band falls below or above the spectrum mean
An exclusive OR function is used to compare each encoded reference spectrum with the encoded data spectra and a classification image is produced
All pixels are classified to the endmember with the greatest number of bands that match unless the user specifies a minimum match threshold, in which case some pixels may be unclassified if they do not meet the criteria
Algorithm → Binary Encoding Import → from ROI from Input File Select All Items Endmember Spectra Options → Plot Endmembers Apply
Binary Encoding Parameters
Tutorial: multispectral classification Tutorial: multispectral classification (cont.)(cont.)
Spectral Classification Methods (cont.)Spectral Classification Methods (cont.)• Spectral Angle Mapper Classification
Uses the n-dimensional angle to match pixels to reference spectra
Determines the spectral similarity between two spectra by calculating the angle between the spectra, treating them as vectors in a space with dimensionality equal to the number of bands
Endmember CollectionAlgorithm → Spectral Angle Mapper
Tutorial: multispectral classification Tutorial: multispectral classification (cont.)(cont.)
Post Classification ProcessingPost Classification Processing• Classification Method → Rule Image Values
Represent Parallelepiped Number of bands that satisfied the parallelepiped criteria Minimum Distance Sum of the distances from the class means Maximum Likelihood Probability of pixel belonging to class Mahalanobis Distance Distances from the class means Binary Encoding Binary Match in Percent Spectral Angle Mapper Spectral Angle in Radians
Tools → Color Mapping → ENVI Color Tables Stretch Bottom and Stretch Top sliders
Cursor Location/ValueClassification → Post Classification → Rule Classifier
File: can_tmr.sam Rule Image Classifier Tool
Tutorial: multispectral classification Tutorial: multispectral classification (cont.)(cont.)
Post Classification Processing (cont.)Post Classification Processing (cont.)• Class Statistics
Classification → Post Classification → Class StatisticsSelect All Items
• Confusion MatrixComparison of two classified images (the classification and the “truth”
image), or a classified image and ROIsThe truth image can be another classified image, or an image created
from actual ground truth measurements
• Classification → Post Classification → Confusion Matrix → [method]Using Ground Truth Image, or Using Ground Truth ROIs.
• Match Classes Parameters dialog
Tutorial: multispectral classification Tutorial: multispectral classification (cont.)(cont.)
Post Classification Processing (cont.)Post Classification Processing (cont.)• Clump and Sieve
For generalizing classification images, Sieve is usually run first to remove the isolated pixels based on a size (number of pixels) threshold. Clump is run to add spatial coherency to existing classes by combining adjacent similar classified areas
• Compare the pre-calculated results in the files can_sv.img (sieve) and can_clmp.img (clump of the sieve result) to the classified image can_pcls.img
• Classification → Post Classification → Sieve Classes• Classification → Post Classification → Clump Classes• Combine Classes• Classification → Post Classification → Combine Classes
File: can_sam.img Add Combination
Tutorial: multispectral classification Tutorial: multispectral classification (cont.)(cont.)
Post Classification Processing (cont.)Post Classification Processing (cont.)• Edit Class Colors
Tools → Color Mapping → Class Color MappingTo make the changes permanent, select Options → Save Changes
• Overlay ClassesClassification → Post Classification → Overlay ClassesSelect can_tmr.img band 3 for each RGB bandUse can_comb.img as the classification input
• Interactive Classification OverlaysInteractively toggle classes on and off as overlays on a displayed image, to edit
classes, get class statistics, merge classes, and edit class colors.Display band 4 of can_tmr.imgOverlay → ClassificationTry the various options for assessing the classification under the Options menuChoose various options under the Edit menu to interactively change the
contents of specific classesFile → Save Image As → [Device]
Tutorial: multispectral classification Tutorial: multispectral classification (cont.)(cont.)
Post Classification Processing (cont.)Post Classification Processing (cont.)• Classes to Vector Layers• Overlay → Vectors
File: can_clmp.img• File → Open Vector File → ENVI Vector File
Files: can_v1.evf and can_v2.evf. Select All Layers Load Selected
• Classification → Post Classification → Classification to Vector Raster to Vector Input Band dialog. Choose the generalized image can_clmp.img Select Region #1 and Region #2 and enter the root name canrtv Load Selected at the bottom of the dialog. Load Vector Edit→Edit Layer Properties
• Classification Keys Using Annotation Overlay → Annotation Object → Map Key Edit Map Key Items