LIDAR

From GRASS-Wiki
Revision as of 02:35, 22 April 2009 by ⚠️HamishBowman (talk | contribs) (→‎Import: v.in.ascii -r)
Jump to navigation Jump to search

LIDAR and Multi-beam Swath bathymetry data

Modules

Import

  • r.in.xyz - Create a raster map from an assemblage of many coordinates using univariate statistics. (example)
  • v.in.ascii - Import data from an ASCII file to GRASS vector format.
Due to memory overhead vector point imports will be limited to a few million data points unless topology and database creation is skipped with the -bt flags. It may also be useful to clip the import file to only accept points falling within the current region by using the -r' flag. See g.region for details on specifying the region bounds.

Analysis

  • v.outlier - Removes outliers from vector point data.
  • v.lidar.growing - Building contour determination and Region Growing algorithm for determining the building inside.
  • v.lidar.correction - Correction of the v.lidar.growing output. It is the last of the three algorithms for LIDAR filtering.

Surface generation

  • v.surf.rst - Spatial approximation and topographic analysis using regularized spline with tension.
  • v.surf.idw - Surface interpolation from vector point data by Inverse Distance Squared Weighting.
  • v.surf.bspline - Surface interpolation from vector point data by bicubic or bilineal interpolation with Tykhonov regularization.
  • r.fillnulls - Fills no-data areas in raster maps using v.surf.rst splines interpolation.

Swath Bathymetry Tools

see also the Marine_Science#Multibeam_sonar_processing wiki page

  • The v.swathwidith module by David Finlayson for planning surveys. (development page)
  • GRASS integration with MB-System (GPL) software for processing Multibeam and Sidescan Sonar data. GRASS + MBsys + GMT make a nice scriptable trio.

LIDAR Tools

  • r.terraflow - computation of flow direction, flow accumulation and other basic topographic terrain indices from massive raster digital elevation models (DEM). From the Duke University STREAM project.
  • LAStools are a set of simple command line tools (including source code) for converting to/from ASCII, viewing, comparing, and compressing LIDAR data.
  • libLAS ASPRS LiDAR data translation tools

Micro-tutorial

Preparation

Conversion of text files to LAS

libLAS supports the following column types:

  x - x coordinate
  y - y coordinate
  z - z coordinate
  a - scan angle
  i - intensity
  n - number of returns for given pulse (1..n)
  r - number of this return (1..r)
  c - classification
  u - user data (but only 1 byte)
  p - point source ID
  e - edge of flight line
  d - direction of scan flag
  t - GPS time
  s - skip column

Sample text data such as:

  returntime,pulse,east,north,height,intensity,stripe
  549778.907200,1,673999.940,5099680.080,507.425,20.0,45105
  ...

can be converted to LAS format like this:

  returntime - t
  pulse - r
  east - x
  north - y
  height - z
  intensity - i
  stripe - s

First parse (sanity check):

  txt2las -parse trxyzis data.asc

Then convert:

  txt2las -parse trxyzis -i data.asc -o data.las 

While you may not need to do this conversion for GRASS import, the resulting files are way smaller than the uncompressed text files; additionally, they are in a defined format.

Import

  • Use the libLAS utilities to import LAS data into GRASS.
  • Data stored in text files can generally be imported directly into GRASS.

Import to raster DEM

Check bounds and SRS:

$ lasinfo "Serpent_Mound_Model_LAS_Data.las"

 [...]
 Min X Y Z                  289020.900000 4320942.610000 166.780000
 Max X Y Z                  290106.020000 4323641.570000 215.480000
Spatial Reference           +proj=utm +zone=17 +ellps=WGS84 +units=m 

After creating a suitable UTM zone 17 location (EPSG:32617) set the region according to the information from lasinfo at 1m resolution, rounding grid outwards to align to whole meters:

GRASS> g.region n=4323641.57 s=4320942.61 w=289020.90 e=290106.02 res=1 -ap

Finally, import with r.in.xyz with data piped directly from the las2txt program and set a nice equalized color table:

BASEMAP="Serpent_Mound_Model_LAS"

las2txt --stdout "${BASEMAP}_Data.las" | \
   r.in.xyz in=- out=${BASEMAP}_Data fs=space method=mean

r.colors ${BASEMAP}_Data color=bcyr -e

The above example uses the default z-elevation level as the 3rd term, but by using the las2txt --parse command other fields (such as intensity) can be imported instead via "--parse xyi".

Import as vector points

Region setting (establishing the grid) is not needed for vector features so we can go directly to the import step. To deal with millions of input points v.in.ascii should be run with the options to skip creation of an attribute database and building topology as these can consume large amounts of memory. Note that vector maps without topology built are somewhat limited in their ability to be processed. Most LIDAR specific modules have been adapted to not require topology. Even so, after initial cleaning steps it is often more efficient to work with huge datasets in GRASS as raster data.

las2txt --stdout "${BASEMAP}_Data.las" | \
  v.in.ascii -tbz z=3 out="${BASEMAP}_pts" fs=space

If topology was built, you can use d.vect's -z flag to colorize by elevation value. Without topology you can still colorize, but you need to use color rules based on absolute elevations, not percentage of scale.

# display colorized points for data with built topology
d.vect map=lidar_pts size=1 -z zcolor=elevation

Clean raster DEM

(fill holes)

# convert to vector points
r.to.vect -z feature=point in=${BASEMAP}_Data out=${BASEMAP}_pt

# interpolate using a regularized spline fit
# this is very slow, but produces very high quality output
v.surf.rst layer=0 in=${BASEMAP}_pt elev=${BASEMAP}.rst

# create 5m buffer area around original data points
r.buffer in=${BASEMAP}_Data out=${BASEMAP}.5m_buff dist=5

# crop interpolated DEM to only include areas nearby actual data
r.mapcalc "${BASEMAP}.filled = \
   if( isnull(${BASEMAP}.5m_buff), null(), ${BASEMAP}.rst)"

# set colors to something nice
r.colors ${BASEMAP}.filled color=bcyr -e


Depending on your needs, r.fillnulls, v.surf.bspline, v.surf.idw, r.surf.idw, r.surf.idw2, or r.surf.nnbathy may be faster than the v.surf.rst method.

Visualize raster DEM in 3D

nviz ${BASEMAP}.filled
  • Set z-exag to 2.0
  • In Visualize → Raster Surfaces set the fine (final) resolution to 1, and coarse (preview) resolution to 5.
  • Set the height to 500.0, the perspective to 15.0, and drag the view-puck to the North-West and reasonably zoomed in.
You should now be able to see the serpent:
The Great Serpent Mound, Adams County, Ohio, USA


It is possible to show vector points in 3D, but millions of them may make the program run slow. Topology is required (v.build). Tick the "3D" box in the Visualize → Vector points dialog.

Export

Export to LAS

This is the reverse of the import step, but using v.out.ascii or r.out.xyz with txt2las. Because the v.out.ascii module exports category number which we are not interested in, we cut it away with the UNIX cut utility.

v.out.ascii ${BASEMAP}_pts fs=space | cut -f1-3 -d' ' \
    > ${BASEMAP}_export.txt

txt2las --parse xyz -i ${BASEMAP}_export.txt

Sample data

Widely used in GRASS tutorials

Other

  • USGS Center for LIDAR Information Coordination and Knowledge (aka CLICK) - USGS LiDAR point cloud distribution site
    http://lidar.cr.usgs.gov
  • EarthScope Spatial Data Explorer - A java application for querying, browsing, and acquiring data from the EarthScope Spatial Data Repository. Currently includes a number of LiDAR datasets.
    http://www.earthscope.org/data/lidar.php

Links

  • libLAS - LAS 1.0/1.1 ASPRS LiDAR data translation toolset