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Run Time Parameters
Sebastien edited this page Feb 2, 2023
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There are the following run time parameters that can be used to adjust the results. Note that these are for the `master` branch and may not be reflected in your build. Check `python run.py —help`.
usage: run.py [options] <project name>
OpenDroneMap
positional arguments:
<project name> Name of Project (i.e subdirectory of projects folder)
optional arguments:
-h, --help show this help message and exit
--images <path>, -i <path>
Path to input images
--project-path <path>
Path to the project folder
--resize-to <integer>
resizes images by the largest side for opensfm. Set to
-1 to disable. Default: 2048
--end-with <string>, -e <string>
Can be one of:dataset | split | merge | opensfm | mve
| odm_filterpoints | odm_meshing | mvs_texturing |
odm_georeferencing | odm_dem | odm_orthophoto
--rerun <string>, -r <string>
Can be one of:dataset | split | merge | opensfm | mve
| odm_filterpoints | odm_meshing | mvs_texturing |
odm_georeferencing | odm_dem | odm_orthophoto
--rerun-all force rerun of all tasks
--rerun-from <string>
Can be one of:dataset | split | merge | opensfm | mve
| odm_filterpoints | odm_meshing | mvs_texturing |
odm_georeferencing | odm_dem | odm_orthophoto
--video <string> Path to the video file to process
--slam-config <string>
Path to config file for orb-slam
--proj <PROJ4 string>
Projection used to transform the model into geographic
coordinates
--min-num-features <integer>
Minimum number of features to extract per image. More
features leads to better results but slower execution.
Default: 8000
--matcher-neighbors <integer>
Number of nearest images to pre-match based on GPS
exif data. Set to 0 to skip pre-matching. Neighbors
works together with Distance parameter, set both to 0
to not use pre-matching. OpenSFM uses both parameters
at the same time, Bundler uses only one which has
value, prefering the Neighbors parameter. Default: 8
--matcher-distance <integer>
Distance threshold in meters to find pre-matching
images based on GPS exif data. Set both matcher-
neighbors and this to 0 to skip pre-matching. Default:
0
--use-fixed-camera-params
Turn off camera parameter optimization during bundler
--max-concurrency <positive integer>
The maximum number of processes to use in various
processes. Peak memory requirement is ~1GB per thread
and 2 megapixel image resolution. Default: 4
--depthmap-resolution <positive float>
Controls the density of the point cloud by setting the
resolution of the depthmap images. Higher values take
longer to compute but produce denser point clouds.
Default: 640
--opensfm-depthmap-min-consistent-views <integer: 2 <= x <= 9>
Minimum number of views that should reconstruct a
point for it to be valid. Use lower values if your
images have less overlap. Lower values result in
denser point clouds but with more noise. Default: 3
--opensfm-depthmap-method <string>
Raw depthmap computation algorithm. PATCH_MATCH and
PATCH_MATCH_SAMPLE are faster, but might miss some
valid points. BRUTE_FORCE takes longer but produces
denser reconstructions. Default: PATCH_MATCH
--opensfm-depthmap-min-patch-sd <positive float>
When using PATCH_MATCH or PATCH_MATCH_SAMPLE, controls
the standard deviation threshold to include patches.
Patches with lower standard deviation are ignored.
Default: 1
--use-hybrid-bundle-adjustment
Run local bundle adjustment for every image added to
the reconstruction and a global adjustment every 100
images. Speeds up reconstruction for very large
datasets.
--mve-confidence <float: 0 <= x <= 1>
Discard points that have less than a certain
confidence threshold. This only affects dense
reconstructions performed with MVE. Higher values
discard more points. Default: 0.6
--use-3dmesh Use a full 3D mesh to compute the orthophoto instead
of a 2.5D mesh. This option is a bit faster and
provides similar results in planar areas.
--skip-3dmodel Skip generation of a full 3D model. This can save time
if you only need 2D results such as orthophotos and
DEMs.
--use-opensfm-dense Use opensfm to compute dense point cloud alternatively
--ignore-gsd Ignore Ground Sampling Distance (GSD). GSD caps the
maximum resolution of image outputs and resizes images
when necessary, resulting in faster processing and
lower memory usage. Since GSD is an estimate,
sometimes ignoring it can result in slightly better
image output quality.
--mesh-size <positive integer>
The maximum vertex count of the output mesh. Default:
100000
--mesh-octree-depth <positive integer>
Oct-tree depth used in the mesh reconstruction,
increase to get more vertices, recommended values are
8-12. Default: 9
--mesh-samples <float >= 1.0>
Number of points per octree node, recommended and
default value: 1.0
--mesh-point-weight <positive float>
This floating point value specifies the importance
that interpolation of the point samples is given in
the formulation of the screened Poisson equation. The
results of the original (unscreened) Poisson
Reconstruction can be obtained by setting this value
to 0.Default= 4
--fast-orthophoto Skips dense reconstruction and 3D model generation. It
generates an orthophoto directly from the sparse
reconstruction. If you just need an orthophoto and do
not need a full 3D model, turn on this option.
Experimental.
--crop <positive float>
Automatically crop image outputs by creating a smooth
buffer around the dataset boundaries, shrinked by N
meters. Use 0 to disable cropping. Default: 3
--pc-classify Classify the point cloud outputs using a Simple
Morphological Filter. You can control the behavior of
this option by tweaking the --dem-* parameters.
Default: False
--pc-csv Export the georeferenced point cloud in CSV format.
Default: False
--pc-las Export the georeferenced point cloud in LAS format.
Default: False
--pc-filter <positive float>
Filters the point cloud by removing points that
deviate more than N standard deviations from the local
mean. Set to 0 to disable filtering. Default: 2.5
--smrf-scalar <positive float>
Simple Morphological Filter elevation scalar
parameter. Default: 1.25
--smrf-slope <positive float>
Simple Morphological Filter slope parameter (rise over
run). Default: 0.15
--smrf-threshold <positive float>
Simple Morphological Filter elevation threshold
parameter (meters). Default: 0.5
--smrf-window <positive float>
Simple Morphological Filter window radius parameter
(meters). Default: 18.0
--texturing-data-term <string>
Data term: [area, gmi]. Default: gmi
--texturing-outlier-removal-type <string>
Type of photometric outlier removal method: [none,
gauss_damping, gauss_clamping]. Default:
gauss_clamping
--texturing-skip-visibility-test
Skip geometric visibility test. Default: False
--texturing-skip-global-seam-leveling
Skip global seam leveling. Useful for IR data.Default:
False
--texturing-skip-local-seam-leveling
Skip local seam blending. Default: False
--texturing-skip-hole-filling
Skip filling of holes in the mesh. Default: False
--texturing-keep-unseen-faces
Keep faces in the mesh that are not seen in any
camera. Default: False
--texturing-tone-mapping <string>
Turn on gamma tone mapping or none for no tone
mapping. Choices are 'gamma' or 'none'. Default: none
--gcp <path string> path to the file containing the ground control points
used for georeferencing. Default: None. The file needs
to be on the following line format: easting northing
height pixelrow pixelcol imagename
--use-exif Use this tag if you have a gcp_list.txt but want to
use the exif geotags instead
--dtm Use this tag to build a DTM (Digital Terrain Model,
ground only) using a simple morphological filter.
Check the --dem* and --smrf* parameters for finer
tuning.
--dsm Use this tag to build a DSM (Digital Surface Model,
ground + objects) using a progressive morphological
filter. Check the --dem* parameters for finer tuning.
--dem-gapfill-steps <positive integer>
Number of steps used to fill areas with gaps. Set to 0
to disable gap filling. Starting with a radius equal
to the output resolution, N different DEMs are
generated with progressively bigger radius using the
inverse distance weighted (IDW) algorithm and merged
together. Remaining gaps are then merged using nearest
neighbor interpolation. Default=3
--dem-resolution <float>
DSM/DTM resolution in cm / pixel. Default: 5
--dem-decimation <positive integer>
Decimate the points before generating the DEM. 1 is no
decimation (full quality). 100 decimates ~99% of the
points. Useful for speeding up generation. Default=1
--dem-euclidean-map Computes an euclidean raster map for each DEM. The map
reports the distance from each cell to the nearest
NODATA value (before any hole filling takes place).
This can be useful to isolate the areas that have been
filled. Default: False
--orthophoto-resolution <float > 0.0>
Orthophoto resolution in cm / pixel. Default: 5
--orthophoto-no-tiled
Set this parameter if you want a stripped geoTIFF.
Default: False
--orthophoto-compression <string>
Set the compression to use. Note that this could break
gdal_translate if you don't know what you are doing.
Options: JPEG, LZW, PACKBITS, DEFLATE, LZMA, NONE.
Default: DEFLATE
--orthophoto-bigtiff {YES,NO,IF_NEEDED,IF_SAFER}
Control whether the created orthophoto is a BigTIFF or
classic TIFF. BigTIFF is a variant for files larger
than 4GiB of data. Options are YES, NO, IF_NEEDED,
IF_SAFER. See GDAL specs:
https://www.gdal.org/frmt_gtiff.html for more info.
Default: IF_SAFER
--orthophoto-cutline Generates a polygon around the cropping area that cuts
the orthophoto around the edges of features. This
polygon can be useful for stitching seamless mosaics
with multiple overlapping orthophotos. Default: False
--build-overviews Build orthophoto overviews using gdaladdo.
--verbose, -v Print additional messages to the console Default:
False
--time Generates a benchmark file with runtime info Default:
False
--version Displays version number and exits.
--split <positive integer>
Average number of images per submodel. When splitting
a large dataset into smaller submodels, images are
grouped into clusters. This value regulates the number
of images that each cluster should have on average.
--split-overlap <positive integer>
Radius of the overlap between submodels. After
grouping images into clusters, images that are closer
than this radius to a cluster are added to the
cluster. This is done to ensure that neighboring
submodels overlap.
--sm-cluster <string>
URL to a ClusterODM instance for distributing a split-
merge workflow on multiple nodes in parallel. Default:
None
--merge <string> Choose what to merge in the merge step in a split
dataset. By default all available outputs are merged.
Default: all
More documentation on cmvs and pmvs available here:
http://www.di.ens.fr/cmvs/documentation.html
http://www.di.ens.fr/pmvs/documentation.html