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NAME

       i.maxlik  - Classifies the cell spectral reflectances in imagery data.
       Classification  is  based  on  the  spectral  signature  information  generated  by either
       i.cluster, g.gui.iclass, or i.gensig.

KEYWORDS

       imagery, classification, Maximum Likelihood Classification, MLC

SYNOPSIS

       i.maxlik
       i.maxlik --help
       i.maxlik   group=name   subgroup=name   signaturefile=name   output=name     [reject=name]
       [--overwrite]  [--help]  [--verbose]  [--quiet]  [--ui]

   Flags:
       --overwrite
           Allow output files to overwrite existing files

       --help
           Print usage summary

       --verbose
           Verbose module output

       --quiet
           Quiet module output

       --ui
           Force launching GUI dialog

   Parameters:
       group=name [required]
           Name of input imagery group

       subgroup=name [required]
           Name of input imagery subgroup

       signaturefile=name [required]
           Name of input file containing signatures
           Generated by either i.cluster, g.gui.iclass, or i.gensig

       output=name [required]
           Name for output raster map holding classification results

       reject=name
           Name for output raster map holding reject threshold results

DESCRIPTION

       i.maxlik  is  a  maximum-likelihood  discriminant  analysis classifier.  It can be used to
       perform the second step in either an unsupervised or a supervised image classification.

       Either image classification methods are performed in two steps.   The  first  step  in  an
       unsupervised  image  classification  is  performed  by  i.cluster;  the  first  step  in a
       supervised classification is executed by the GRASS program g.gui.iclass (or  by  providing
       any other raster map with already existing training areas). In both cases, the second step
       in the image classification procedure is performed by i.maxlik.

       In an unsupervised classification, the  maximum-likelihood  classifier  uses  the  cluster
       means  and  covariance  matrices  from  the i.cluster signature file to determine to which
       category (spectral class) each cell in the image has the highest probability of belonging.
       In  a  supervised  image classification, the maximum-likelihood classifier uses the region
       means and covariance matrices from the spectral signature file generated by  g.gui.iclass,
       based  on  regions  (groups  of  image  pixels)  chosen by the user, to determine to which
       category each cell in the image has the highest probability of belonging.

       In either case, the raster map output by i.maxlik is a classified image in which each cell
       has  been  assigned  to  a  spectral  class  (i.e.,  a  category).   The  spectral classes
       (categories) can be related to specific land cover types on the ground.

NOTES

       The maximum-likelihood classifier assumes that the  spectral  signatures  for  each  class
       (category)  in  each  band  file  are  normally  distributed  (i.e.,  Gaussian in nature).
       Algorithms, such as i.cluster, g.gui.iclass, or i.gensig, however, can  create  signatures
       that  are not valid distributed (more likely with g.gui.iclass).  If this occurs, i.maxlik
       will reject them and display a warning message.

       The signature file (signaturefile) contains the cluster and covariance matrices that  were
       calculated  by  the  GRASS  program i.cluster (or the region means and covariance matrices
       generated by g.gui.iclass, if the user runs a supervised classification).  These  spectral
       signatures  are  what  determine  the  categories  (classes) to which image pixels will be
       assigned during the classification process.

       The optional name of a reject raster map holds the reject threshold results. This  is  the
       result  of  a  chi  square test on each discriminant result at various threshold levels of
       confidence to determine at what confidence level each cell classified (categorized). It is
       the  reject threshold map layer, and contains the index to one calculated confidence level
       for each classified cell in the classified image. 16 confidence intervals are  predefined,
       and  the  reject map is to be interpreted as 1 = keep and 16 = reject. One of the possible
       uses for this map layer is as a mask, to identify cells in the classified image that  have
       a low probability (high reject index) of being assigned to the correct class.

EXAMPLE

       Second  part  of  the  unsupervised  classification  of  a LANDSAT subscene (VIZ, NIR, MIR
       channels) in North Carolina (see i.cluster manual page for the first part of the example):
       # using here the signaturefile created by i.cluster
       i.maxlik group=lsat7_2002 subgroup=res_30m \
         signaturefile=cluster_lsat2002 \
         output=lsat7_2002_cluster_classes reject=lsat7_2002_cluster_reject
       # visually check result
       d.mon wx0
       d.rast.leg lsat7_2002_cluster_classes
       d.rast.leg lsat7_2002_cluster_reject
       # see how many pixels were rejected at given levels
       r.report lsat7_2002_cluster_reject units=k,p
       # optionally, filter out pixels with high level of rejection
       # here we remove pixels of at least 90% of rejection probability, i.e. categories 12-16
       r.mapcalc "lsat7_2002_cluster_classes_filtered = \
                  if(lsat7_2002_cluster_reject <= 12, lsat7_2002_cluster_classes, null())"

       RGB composite of input data

       Output raster map with pixels classified (10 classes)

       Output raster map with  rejection  probability  values  (pixel  classification  confidence
       levels)

SEE ALSO

       Image processing and Image classification wiki pages and for historical reference also the
       GRASS GIS 4 Image Processing manual

        g.gui.iclass, i.cluster, i.gensig, i.group, i.segment, i.smap, r.kappa

AUTHORS

       Michael Shapiro, U.S.Army Construction Engineering Research Laboratory
       Tao Wen, University of Illinois at Urbana-Champaign, Illinois
       Semantic label support: Maris Nartiss, University of Latvia

SOURCE CODE

       Available at: i.maxlik source code (history)

       Accessed: Mon Jun 13 15:10:48 2022

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       © 2003-2022 GRASS Development Team, GRASS GIS 8.2.0 Reference Manual