C++ programs for calculating the isolation and prominence from digital elevation data.
C++14 support is required to build the code. Binaries are placed in the "debug" or "release" subdirectories.
Debug version:
DEBUG=1 make
Release version:
make
This has been tested under Mac OS 12.2.1 with clang-1300.0.29.30, Unbuntu 20.04 with gcc 9 and Debian 12 with gcc 13.2.0.
Debug version:
nmake DEBUG=1 -f makefile.win
Release version:
nmake -f makefile.win
This has been tested under Windows 10 with Microsoft Visual Studio 2022.
Download source DEM data for the region of interest. 90-meter data is available from NASA (SRTM), or improved void-filled data is at viewfinderpanoramas. Higher resolution data for North America is available at The National Map.
Copernicus 30m GLO30 data can be downloaded from here.
Note that SRTM and GLO30 filenames reference the southwest corner of the tile, while NED filenames reference the northwest corner.
Because tiles need to reference their neighbors when computing prominence, all tiles must reside in a single directory and have specific names.
SRTM or the data from Viewfinderpanoramas is delivered as HGT files, with names like this:
N59E006.hgt
Both the original 90m SRTM data and newer 30m data are available. The prominence code
can handle either format via the -f
flag. The isolation code currently handles only 90m data.
The National Elevation Dataset (NED) covers the U.S. at various resolutions:
- NED1 has 1-arcsecond (~90 foot) samples
- NED13 has 1/3-arcsecond (~30 foot) samples
- NED19 has 1/9 arcsecond (~10 foot) samples.
NED data is delivered as zip files, one per square degree, with names like:
n59e006.zip
The prominence code will extract the FLT file from the zip (using 7z
on Windows or unzip
on Mac/Linux).
NED19 data is based on LIDAR. As of this writing, it covers only part of the U.S. Data is delivered
as zip files that are 1/4 of a degree on each side. The zip files containing
the data contain the LIDAR collection name in the filename, making them difficult to discover. There
is a Python script in the scripts
subdirectory that will discover the tiles for a given lat/lng,
download them, covert them to FLT format, and run the prominence code on them.
usage: run_ned19_prominence.py [-h] --tile_dir TILE_DIR --output_dir
OUTPUT_DIR
[--prominence_command PROMINENCE_COMMAND]
[--threads THREADS]
min_lat max_lat min_lng max_lng
Multiple LIDAR collections can cover the same tile. In this case, the script picks one arbitrarily.
The data is delivered as TIFF files. Convert them to FLT using gdal_translate
, for example:
gdal_translate -of EHdr Copernicus_DSM_COG_10_N59_00_E006_00_DEM.tif Copernicus_DSM_COG_10_N59_00_E006_00_DEM.flt
There is a script in the scripts
subdirectory that can automate the downloading and conversion of tiles,
followed by running the prominence program on them.
usage: run_glo_prominence.py [-h] [--tile_dir TILE_DIR]
[--output_dir OUTPUT_DIR]
[--prominence_command PROMINENCE_COMMAND]
[--threads THREADS]
min_lat max_lat min_lng max_lng
FABDEM (Forest And Buildings removed Copernicus DEM) is a version of the GLO30 data that has been modified by machine
learning techniques to remove trees and buildings, leaving the bare earth. To process FABDEM, use the same run_glo_prominence
Python script as with GLO30, giving the additional argument --format FABDEM
.
This LIDAR-based data is high resolution, but has spotty coverage. This is raw LIDAR data converted into a regular 1m grid. It is delivered as TIFF files in the UTM projection, not lat/lng coordinates. The tiles must be converted to FLT format before running the prominence program on them.
The data was collected in medium-scale areas, such as a county, and the tiles are organized into "projects" based on collection. Thus, it is generally not possible to merge the tiles from multiple projects with each other. You must be very careful interpreting the results, as any peaks whose key cols are outside of the project's coverage will have incorrect prominence. You can browse the coverage here.
There is a script in the scripts
subdirectory that can automate the downloading and conversion of tiles,
followed by running the prominence program on them.
usage: run_3dep1m_prominence.py [-h] --tile_dir TILE_DIR --output_dir
OUTPUT_DIR --project PROJECT --zone ZONE
[--prominence_command PROMINENCE_COMMAND]
[--threads THREADS]
min_x max_x min_y max_y
Note that you must specify the UTM zone (which can be inferred from the filenames of tiles in the project), the project name (like "CA_SantaClaraCounty_2020_A20"), and the coordinates are specified as X/Y in UTM, with units of 10,000 meters. These X and Y coordinates also correspond to the naming of the tiles.
Name | Resolution | Coverage | Projection | Download |
---|---|---|---|---|
SRTM | 90m | global | lat/lng | Link |
NED1 | 30m | US, Canada, Mexico | lat/lng | Link |
GLO-30 | 30m | global minus Azerbaijan and Armenia | lat/lng | Link |
FABDEM | 30m | GLO-30 minus < -60°S and > 80°N | lat/lng | Link |
NED13 | 10m | US | lat/lng | Link |
NED19 | 3m | partial US | lat/lng | Link |
3DEP1m | 1m | partial US | UTM | Link |
High-resolution LIDAR can be processed by first converting it to FLT files using
the following Python script in the scripts
subdirectory.
usage: run_lidar_prominence.py [-h] [--input_units {feet,meters}] [--output_units {feet,meters}]
[--output_dir OUTPUT_DIR] [--tile_dir TILE_DIR] [--binary_dir BINARY_DIR]
[--threads THREADS] [--min_prominence MIN_PROMINENCE]
[--skip_boundary | --no-skip_boundary]
input_files [input_files ...]
Convert LIDAR to standard tiles
positional arguments:
input_files Input Lidar tiles, or GDAL VRT of tiles
optional arguments:
-h, --help show this help message and exit
--input_units {feet,meters}
Elevation units in input files
--output_units {feet,meters}
Elevation units in final output files
--output_dir OUTPUT_DIR
Directory to place prominence output
--tile_dir TILE_DIR Directory to place warped tiles
--binary_dir BINARY_DIR
Path to prominence binary
--threads THREADS Number of threads to use in computing prominence
--min_prominence MIN_PROMINENCE
Filter to this minimum prominence in meters
--skip_boundary, --no-skip_boundary
Skip computation of raster boundary; uses more disk
This takes one or more input DEM files in any format GDAL understands, and warps them into a set of output
tiles (in output_dir
) that are 0.1 degrees on a side in the lat/lng projection (EPSG:4326), with 10,000 x 10,000 resolution. This is about 1 meter
per sample.
The script them runs the prominence
and merge_divide_trees
programs to generate the output, which will be in the
file prominence/results.txt.
Requirements:
- Python 3
- GDAL 3.8.0 or later in the path
- You must have already built the code in this repo (RELEASE version strongly preferred for reasonable performance). Specify the path to the built binaries with the
--binary_dir
flag. - Enough disk space for another copy of your source data at
--tile_dir
(default is thetiles
subdirectory of your current directory.
Sample invocation:
python mountains/scripts/run_lidar_prominence.py --binary_dir mountains/code/release --threads 6 <path to data>/*.tif
isolation -- <min latitude> <max latitude> <min longitude> <max longitude>
Options:
-i directory Directory with terrain data
-m min_isolation Minimum isolation threshold for output, default = 1km
-o directory Directory for output data
-t num_threads Number of threads, default = 1
This will generate one output text file per input tile, containing the isolation of peaks in that tile. The files can be merged and sorted with standard command-line utilities.
The isolation calculation is currently limited to SRTM input data, though it could fairly easily be extended to the other data sets.
First, generate divide trees for tiles of interest:
prominence -- <min latitude> <max latitude> <min longitude> <max longitude>
Options:
-i directory Directory with terrain data
-o directory Directory for output data
-f format "SRTM", "SRTM30", "NED13-ZIP", "NED1-ZIP", "NED19", "3DEP-1M", "GLO30", "LIDAR"
-k filename File with KML polygon to filter input tiles
-m min_prominence Minimum prominence threshold for output
in same units as terrain data, default = 100
-z UTM zone (if input data is in UTM)
-t num_threads Number of threads, default = 1
This will produce divide trees with the .dvt extension, and KML files that can be viewed in Google Earth. The unpruned trees are generally too large to be merged or to load into Earth. Use the pruned versions (identified by "pruned" in their filenames).
Next, merge the resultant pruned divide trees into a single, larger divide tree. Large merges can be done in parallel with multiple threads.
merge_divide_trees output_file_prefix input_file [...]
Input file should have .dvt extension
Output file prefix should have no extension
Options:
-f Finalize output tree: delete all runoffs and then prune
-m min_prominence Minimum prominence threshold for output, default = 100
-t num_threads Number of threads to use, default = 1
Specify the "-f" flag to get final output when you no longer need to perform any further merges. (In previous versions, merge_divide_tree was serial, and it made sense to merge in multiple stages, specifying -f only at the last stage. Now you can generally merge everything in one parallel step.)
The output is a dvt file with the merged divide tree, and a text file with prominence values. If desired, the text file can be filtered to exclude peaks outside of a polygon specified in KML, for example, to restrict the output to a single continent:
filter_points input_file polygon_file output_file
Filters input_file, printing only lines inside the polygon in polygon_file to output_file
Options:
-a longitude Add 360 to any longitudes < this value in polygon.
Allows polygon to cross antimeridian (negative longitude gets +360)
By default, the programs don't print much to the screen. To see more of what's happening, you can
set the log level on the command line using the flags from the easylogging
library. Specifying --v=1
will print each major operation, while --v=4
will produce a
torrent of output.
The isolation file has one peak per line, in this format:
latitude,longitude,elevation,ILP latitude,ILP longitude,isolation in km
where ILP means isolation limit point.
A zip file with our isolation results for the world is here.
The prominence file has one peak per line, in this format:
latitude,longitude,elevation,key saddle latitude,key saddle longitude,prominence
The units of elevation and prominence are the same as the input terrain data.
A zip file with our prominence results for the world is here, with elevations in meters, down to 100 feet (30.48m) of prominence. A visualization of the results is here.
Given a divide tree, it's possible to compute each peak's prominence parent, that is, the first more prominent peak that's encountered while walking from a peak, then to its key saddle, and then up the ridge up the other side; and its line parent, which is the first higher peak encountered on such a walk. While prominence parents are parameterless, line parents depend on the prominence threshold chosen to define a "peak". In this implementation, the definition of a line parent is implicit in the prominence threshold defined when building the divide tree (that is, any peak in the divide tree can be a line parent).
Usage:
compute_parents divide_tree.dvt output_file
Options:
-m min_prominence Minimum prominence threshold for output, default = 100
The input divide tree must be free of runoffs (see the options to merge_divide_trees
). The output will list a peak, its prominence
parent, and its line parent on each line. Landmass high points (where the prominence is equal to the elevation) are not included.
Their key saddles are the ocean, and there isn't a well-defined way to connect such peaks to other land masses through the divide tree.
The "anti-prominence" of low points can be computed by the same algorithm, simply by changing
the sign of the elevation values. This can be done by giving the -a option to the
prominence
command. Then, at the final stage of merging (with the -f flag), add the -a option
again to flip the elevation values back to positive.
Explanations of what these calculations are about are at http://andrewkirmse.com/isolation and http://andrewkirmse.com/prominence, including nice visualizations.
This work was later published in the October, 2017 issue of the journal "Progress of Physical Geography" here. The article can be read here.