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NAME

       v.surf.rst  - Performs surface interpolation from vector points map by splines.
       Spatial  approximation  and  topographic  analysis  from  given point or isoline data in vector format to
       floating point raster format using regularized spline with tension.

KEYWORDS

       vector, surface, interpolation, splines, RST, 3D, no-data filling

SYNOPSIS

       v.surf.rst
       v.surf.rst --help
       v.surf.rst [-ctd]  input=name   [layer=string]    [zcolumn=name]    [where=sql_query]    [elevation=name]
       [slope=name]        [aspect=name]       [pcurvature=name]       [tcurvature=name]       [mcurvature=name]
       [deviations=name]    [cvdev=name]    [treeseg=name]    [overwin=name]    [nprocs=integer]     [mask=name]
       [tension=float]      [smooth=float]      [smooth_column=string]      [segmax=integer]     [npmin=integer]
       [dmin=float]   [dmax=float]   [zscale=float]   [theta=float]   [scalex=float]    [--overwrite]   [--help]
       [--verbose]  [--quiet]  [--ui]

   Flags:
       -c
           Perform cross-validation procedure without raster approximation

       -t
           Use scale dependent tension

       -d
           Output partial derivatives instead of topographic parameters

       --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:
       input=name [required]
           Name of input vector map
           Or data source for direct OGR access

       layer=string
           Layer number or name
           Vector  features  can have category values in different layers. This number determines which layer to
           use. When used with direct OGR access this is the layer name.
           Default: 1

       zcolumn=name
           Name of the attribute column with values to be used for approximation
           If not given and input is 2D vector map then category values are used. If input is 3D vector map then
           z-coordinates are used.

       where=sql_query
           WHERE conditions of SQL statement without ’where’ keyword
           Example: income < 1000 and population >= 10000

       elevation=name
           Name for output surface elevation raster map

       slope=name
           Name for output slope raster map

       aspect=name
           Name for output aspect raster map

       pcurvature=name
           Name for output profile curvature raster map

       tcurvature=name
           Name for output tangential curvature raster map

       mcurvature=name
           Name for output mean curvature raster map

       deviations=name
           Name for output deviations vector point map

       cvdev=name
           Name for output cross-validation errors vector point map

       treeseg=name
           Name for output vector map showing quadtree segmentation

       overwin=name
           Name for output vector map showing overlapping windows

       nprocs=integer
           Number of threads for parallel computing
           Default: 1

       mask=name
           Name of raster map used as mask

       tension=float
           Tension parameter
           Default: 40.

       smooth=float
           Smoothing parameter
           Smoothing is by default 0.5 unless smooth_column is specified

       smooth_column=string
           Name of the attribute column with smoothing parameters

       segmax=integer
           Maximum number of points in a segment
           Default: 40

       npmin=integer
           Minimum number of points for approximation in a segment (>segmax)
           Default: 300

       dmin=float
           Minimum distance between points (to remove almost identical points)

       dmax=float
           Maximum distance between points on isoline (to insert additional points)

       zscale=float
           Conversion factor for values used for approximation
           Default: 1.0

       theta=float
           Anisotropy angle (in degrees counterclockwise from East)

       scalex=float
           Anisotropy scaling factor

DESCRIPTION

       v.surf.rst  program  performs spatial approximation based on z-values (input vector map is 3D and zcolumn
       parameter is not given), categories (input vector map is 2D and  zcolumn  parameter  is  not  given),  or
       attributes  (zcolumn  parameter  is  given) of point or isoline data given in a vector map named input to
       grid cells in the output raster map elevation representing a surface.

       As an option, simultaneously with approximation, topographic parameters slope, aspect, profile  curvature
       (measured  in  the direction of the steepest slope), tangential curvature (measured in the direction of a
       tangent to contour line) or mean curvature are computed and saved as raster maps specified by the options
       slope,  aspect,  pcurv,  tcurv,  mcurv  respectively.  If  -d  flag  is  set,  v.surf.rst outputs partial
       derivatives fx,fy,fxx, fyy,fxy  instead  of  slope,  aspect,  profile,  tangential  and  mean  curvatures
       respectively.  If  the  input  vector  map have time stamp, the program creates time stamp for all output
       maps.

       User can either use r.mask to set a mask or specify a raster map in mask option, which will be used as  a
       mask.  The  approximation is skipped for cells which have zero or NULL value in mask. NULL values will be
       assigned to these cells in all output raster maps. Data points  are  checked  for  identical  points  and
       points  that are closer to each other than the given dmin are removed.  If sparsely digitized contours or
       isolines are used as input, additional points are computed between  each  2  points  on  a  line  if  the
       distance  between  them is greater than specified dmax. Parameter zmult allows user to rescale the values
       used for approximation (useful e.g. for transformation of elevations given in feet to meters, so that the
       proper values of slopes and curvatures can be computed).

       Regularized  spline with tension is used for the approximation. The tension parameter tunes the character
       of the resulting surface from thin plate to membrane. Smoothing parameter smooth controls  the  deviation
       between  the  given points and the resulting surface and it can be very effective in smoothing noisy data
       while preserving the geometrical properties of the surface.  With the smoothing  parameter  set  to  zero
       (smooth=0)  the  resulting  surface  passes  exactly  through  the  data points (spatial interpolation is
       performed). When smoothing parameter is used, it is also possible to output a vector point map deviations
       containing deviations of the resulting surface from the given data.

       If  the  number of given points is greater than segmax, segmented processing is used. The region is split
       into quadtree-based rectangular segments, each having  less  than  segmax  points  and  approximation  is
       performed  on  each  segment  of  the  region.  To ensure smooth connection of segments the approximation
       function for each segment is computed using the points in  the  given  segment  and  the  points  in  its
       neighborhood  which  are  in  the  rectangular window surrounding the given segment. The number of points
       taken for approximation is controlled by npmin, the value of which must be larger than segmax.  User  can
       choose  to output vector maps treeseg and overwin which represent the quad tree used for segmentation and
       overlapping neighborhoods from which additional points for approximation on each segment were taken.

       Predictive error of surface approximation for given parameters can be  computed  using  the  -c  flag.  A
       crossvalidation  procedure  is  then  performed  using  the  data  given  in the vector map input and the
       estimated predictive errors are stored in the vector point map cvdev. When using  this  flag,  no  raster
       output maps are computed.  Anisotropic surfaces can be interpolated by setting anisotropy angle theta and
       scaling factor scalex.  The program writes values of selected input and internally computed parameters to
       the history file of raster map elevation.

       The user must run g.region before the program to set the region and resolution for approximation.

NOTES

       v.surf.rst  uses  regularized spline with tension for approximation from vector data. The module does not
       require input data with topology, therefore both level1 (no topology) and level2 (with  topology)  vector
       point  data  are supported.  Additional points are used for approximation between each 2 points on a line
       if the distance between them is greater than specified dmax. If dmax is small (less than cell  size)  the
       number  of  added  data  points  can  be  vary  large  and  slow  down  approximation significantly.  The
       implementation has a segmentation procedure based on quadtrees which enhances the  efficiency  for  large
       data sets. Special color tables are created by the program for output raster maps.

       Topographic  parameters  are  computed  directly  from  the  approximation function so that the important
       relationships between these parameters are preserved. The equations for computation of  these  parameters
       and  their  interpretation  is  described  in Mitasova and Hofierka, 1993 or Neteler and Mitasova, 2004).
       Slopes and aspect are computed in degrees (0-90 and 1-360 respectively).  The aspect raster map has value
       0 assigned to flat areas (with slope less than 0.1%) and to singular points with undefined aspect. Aspect
       points downslope and is 90 to the North, 180 to the West, 270 to the South  and  360  to  the  East,  the
       values  increase  counterclockwise.  Curvatures  are  positive for convex and negative for concave areas.
       Singular points with undefined curvatures have assigned zero values.

       Tension and smoothing allow user to tune the surface character.  For most  landscape  scale  applications
       the  default  values  should  provide  adequate  results.   The  program  gives  warning when significant
       overshoots appear in the resulting surface and higher tension or smoothing should be used.

       To select parameters that will produce a surface with desired properties, it is useful to know  that  the
       method  is  scale  dependent  and the tension works as a rescaling parameter (high tension "increases the
       distances between the points" and reduces the range of impact of each point, low tension  "decreases  the
       distance"  and  the  points  influence  each  other over longer range). Surface with tension set too high
       behaves like a membrane (rubber sheet stretched over the data points) with peak or pit ("crater") in each
       given  point  and  everywhere  else  the surface goes rapidly to trend. If digitized contours are used as
       input data, high tension can cause artificial waves along contours. Lower tension and higher smoothing is
       suggested for such a case.

       Surface with tension set too low behaves like a stiff steel plate and overshoots can appear in areas with
       rapid change of gradient and segmentation can be visible. Increase in tension should solve the problems.

       There are two options how tension can be applied in relation to dnorm  (dnorm  rescales  the  coordinates
       depending  on  the  average data density so that the size of segments with segmax=40 points is around 1 -
       this ensures the numerical stability of the computation):

       1      Default: the given tension is applied to normalized data (x/dnorm), that means that the  distances
              are multiplied (rescaled) by tension/dnorm. If density of points is changed, e.g., by using higher
              dmin, the dnorm changes and tension needs to be changed too to get the same result.   Because  the
              tension  is  applied  to normalized data its suitable value is usually within the 10-100 range and
              does not depend on the actual scale (distances) of the original data (which can be km for regional
              applications or cm for field experiments).

       2      Flag-t:  The given tension is applied to un-normalized data (rescaled tension = tension*dnorm/1000
              is applied to normalized data (x/dnorm) and therefore dnorm cancels out)  so  here  tension  truly
              works as a rescaling parameter.  For regional applications with distances between points in km the
              suitable tension can be 500 or higher, for detailed field scale analysis it can be  0.1.  To  help
              select  how  much  the  data  need  to  be  rescaled the program writes dnorm and rescaled tension
              fi=tension*dnorm/1000 at the beginning of the program run. This rescaled tension should be  around
              20-30. If it is lower or higher, the given tension parameter should be changed accordingly.

       The  default is a recommended choice, however for the applications where the user needs to change density
       of data and preserve the approximation character the -t flag can be helpful.

       Anisotropic data  (e.g.  geologic  phenomena)  can  be  interpolated  using  theta  and  scalex  defining
       orientation  and  ratio  of  the  perpendicular  axes  put  on  the longest/shortest side of the feature,
       respectively. Theta is measured in degrees from East, counterclockwise. Scalex is a ratio of axes  sizes.
       Setting scalex in the range 0-1, results in a pattern prolonged in the direction defined by theta. Scalex
       value 0.5 means that modeled feature is approximately 2 times longer in the direction of  theta  than  in
       the  perpendicular  direction.   Scalex  value  2 means that axes ratio is reverse resulting in a pattern
       perpendicular to the previous example. Please note that anisotropy option has not been extensively tested
       and  may  include bugs (for example, topographic parameters may not be computed correctly) - if there are
       problems, please report to GRASS bugtracker (accessible from http://grass.osgeo.org/).

       For data with values changing over several magnitudes (sometimes the concentration or density data) it is
       suggested to interpolate the log of the values rather than the original ones.

       v.surf.rst  checks  the numerical stability of the algorithm by computing the values in given points, and
       prints the root mean square deviation (rms) found into the history file  of  raster  map  elevation.  For
       computation with smoothing set to 0, rms should be 0. Significant increase in tension is suggested if the
       rms is unexpectedly high for this case. With smoothing parameter greater than zero the surface  will  not
       pass  exactly  through the data points and the higher the parameter the closer the surface will be to the
       trend. The rms then represents a measure of smoothing effect on data. More detailed analysis of smoothing
       effects can be performed using the output deviations option.

       v.surf.rst also writes the values of parameters used in computation into the comment part of history file
       elevation as well as the following values which help to evaluate the  results  and  choose  the  suitable
       parameters:  minimum and maximum z values in the data file (zmin_data, zmax_data) and in the interpolated
       raster map (zmin_int, zmax_int), rescaling parameter used for normalization (dnorm), which influences the
       tension.

       If  visible  connection  of  segments  appears, the program should be rerun with higher npmin to get more
       points from the neighborhood of given segment and/or with higher tension.

       When the number of points in a vector  map  is  not  too  large  (less  than  800),  the  user  can  skip
       segmentation by setting segmax to the number of data points or segmax=700.

       v.surf.rst  gives  warning  when  user  wants  to  interpolate outside the rectangle given by minimum and
       maximum coordinates in the vector map, zoom into the area where the given data are is suggested  in  this
       case.

       When  a mask is used, the program takes all points in the given region for approximation, including those
       in the area which is masked out, to ensure  proper  approximation  along  the  border  of  the  mask.  It
       therefore does not mask out the data points, if this is desirable, it must be done outside v.surf.rst.

   Cross validation procedure
       The  "optimal"  approximation  parameters  for  given  data  can  be  found using a cross-validation (CV)
       procedure (-c flag).  The CV procedure is based on removing one input data point at  a  time,  performing
       the  approximation  for the location of the removed point using the remaining data points and calculating
       the difference between the actual and approximated value for the removed data  point.  The  procedure  is
       repeated  until  every  data  point  has  been,  in  turn,  removed. This form of CV is also known as the
       "leave-one-out" or  "jack-knife"  method  (Hofierka  et  al.,  2002;  Hofierka,  2005).  The  differences
       (residuals)  are  then stored in the cvdev output vector map. Please note that during the CV procedure no
       other output maps can be set, the approximation is performed only for locations defined  by  input  data.
       To  find  "optimal  parameters",  the  CV  procedure  must  be  iteratively  performed for all reasonable
       combinations of the approximation parameters with small incremental steps (e.g.  tension,  smoothing)  in
       order to find a combination with minimal statistical error (also called predictive error) defined by root
       mean squared error (RMSE), mean absolute error (MAE) or other error characteristics.  A script with loops
       for  tested RST parameters can do the job, necessary statistics can be calculated using e.g. v.univar. It
       should be noted that crossvalidation is a time-consuming procedure, usually reasonable for up to  several
       thousands  of  points. For larger data sets, CV should be applied to a representative subset of the data.
       The cross-validation procedure works well  only  for  well-sampled  phenomena  and  when  minimizing  the
       predictive  error  is the goal.  The parameters found by minimizing the predictive (CV) error may not not
       be the best for for poorly sampled phenomena (result could be strongly smoothed  with  lost  details  and
       fluctuations) or when significant noise is present that needs to be smoothed out.

EXAMPLE

   Setting for lidar point cloud
       Lidar  point  clouds  as  well as UAS SfM-based (phodar) point clouds tend to be dense in relation to the
       desired raster resolution and thus a different set of parameters is more advantageous, e.g. in comparison
       to a typical temperature data interpolation.
       v.surf.rst input=points elevation=elevation npmin=100

   Usage of the where parameter
       Using the where parameter, the interpolation can be limited to use only a subset of the input vectors.

       North  Carolina  example  (we  simulate randomly distributed elevation measures which we interpolate to a
       gap-free elevation surface):
       g.region raster=elevation -p
       # random elevation extraction of 500 samplings
       r.random elevation vector_output=elevrand n=500
       v.info -c elevrand
       v.db.select elevrand
       # interpolation based on all points
       v.surf.rst elevrand zcol=value elevation=elev_full
       # apply the color table of the original raster map
       r.colors elev_full raster=elevation
       d.rast elev_full
       d.vect elevrand
       # interpolation based on subset of points (only those over 1300m/asl)
       v.surf.rst elevrand zcol=value elevation=elev_partial where="value > 1300"
       r.colors elev_partial raster=elevation
       d.rast elev_partial
       d.vect elevrand where="value > 1300"

REFERENCES

           •   Mitasova, H., Mitas, L. and Harmon, R.S., 2005, Simultaneous spline approximation and topographic
               analysis for lidar elevation data in open source GIS, IEEE GRSL 2 (4), 375- 379.

           •   Hofierka,  J.,  2005,  Interpolation of Radioactivity Data Using Regularized Spline with Tension.
               Applied GIS, Vol. 1, No. 2, pp. 16-01 to 16-13. DOI: 10.2104/ag050016

           •   Hofierka J., Parajka J., Mitasova H., Mitas L., 2002, Multivariate Interpolation of Precipitation
               Using Regularized Spline with Tension.  Transactions in GIS 6(2), pp. 135-150.

           •   H.  Mitasova,  L.  Mitas,  B.M.  Brown,  D.P. Gerdes, I. Kosinovsky, 1995, Modeling spatially and
               temporally distributed phenomena: New methods and tools for GRASS GIS. International  Journal  of
               GIS, 9 (4), special issue on Integrating GIS and Environmental modeling, 433-446.

           •   Mitasova, H. and Mitas, L., 1993: Interpolation by Regularized Spline with Tension: I. Theory and
               Implementation, Mathematical Geology ,25, 641-655.

           •   Mitasova, H. and Hofierka, J., 1993:  Interpolation  by  Regularized  Spline  with  Tension:  II.
               Application to Terrain Modeling and Surface Geometry Analysis, Mathematical Geology 25, 657-667.

           •   Mitas,  L.,  and  Mitasova  H., 1988,  General variational approach to the approximation problem,
               Computers and Mathematics with Applications, v.16, p. 983-992.

           •   Neteler, M. and Mitasova, H., 2008, Open Source GIS: A GRASS GIS Approach, 3rd Edition, Springer,
               New York, 406 pages.

           •   Talmi, A. and Gilat, G., 1977 : Method for Smooth Approximation of Data, Journal of Computational
               Physics, 23, p.93-123.

           •   Wahba, G., 1990, : Spline Models for Observational Data, CNMS-NSF Regional Conference  series  in
               applied mathematics, 59, SIAM, Philadelphia, Pennsylvania.

SEE ALSO

        v.vol.rst, v.surf.idw, v.surf.bspline, r.fillnulls, g.region

       Overview: Interpolation and Resampling in GRASS GIS

       For examples of applications see GRASS4 implementation and GRASS5 and GRASS6 implementation.

AUTHORS

       Original version of program (in FORTRAN) and GRASS enhancements:
       Lubos  Mitas,  NCSA, University of Illinois at Urbana Champaign, Illinois, USA (1990-2000); Department of
       Physics, North Carolina State University, Raleigh
       Helena Mitasova, USA CERL, Department of Geography,  University  of  Illinois  at  Urbana-Champaign,  USA
       (1990-2001); MEAS, North Carolina State University, Raleigh

       Modified program (translated to C, adapted for GRASS, new segmentation procedure):
       Irina Kosinovsky, US Army CERL, Dave Gerdes, US Army CERL

       Modifications for new sites format and timestamping:
       Darrel McCauley, Purdue University, Bill Brown, US Army CERL

       Update for GRASS5.7, GRASS6 and addition of crossvalidation:
       Jaroslav Hofierka, University of Presov; Radim Blazek, ITC-irst

       Parallelization using OpenMP:
       Stanislav Zubal, Czech Technical University in Prague
       Michal Lacko, Pavol Jozef Safarik University in Kosice

SOURCE CODE

       Available at: v.surf.rst source code (history)

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       © 2003-2019 GRASS Development Team, GRASS GIS 7.8.2 Reference Manual