Type: | Package |
Title: | Apply Unsupervised Segmentation Algorithms from 'OTB' |
Version: | 0.1.0 |
Description: | Apply unsupervised segmentation algorithms included in 'Orfeo ToolBox' software (https://www.orfeo-toolbox.org/), such as mean shift or watershed segmentation. |
Encoding: | UTF-8 |
Imports: | cli, terra, link2GI |
RoxygenNote: | 7.3.2 |
License: | MIT + file LICENSE |
URL: | https://cidree.github.io/OTBsegm/ |
Suggests: | testthat (≥ 3.0.0) |
Config/testthat/edition: | 3 |
NeedsCompilation: | no |
Packaged: | 2025-05-04 16:03:27 UTC; User |
Author: | Adrián Cidre González [aut, cre] |
Maintainer: | Adrián Cidre González <adrian.cidre@gmail.com> |
Repository: | CRAN |
Date/Publication: | 2025-05-06 09:00:05 UTC |
Large-scale segmentation using Mean-Shift
Description
Applies the Mean-Shift segmentation algorithm to an image file or a SpatRaster. Suitable for large images
Usage
segm_lsms(
image,
otb,
spatialr = 5L,
ranger = 15,
minsize = 100L,
tilesize = 500L,
mode = "vector",
mask = NULL,
ram = 256L
)
Arguments
image |
path to raster, or SpatRaster |
otb |
output of |
spatialr |
integer. Spatial radius of the neighborhood |
ranger |
range radius defining the radius (expressed in radiometry unit) in the multispectral space |
minsize |
integer. Minimum size of a region (in pixel unit) in segmentation. Smaller clusters will be merged to the neighboring cluster with the closest radiometry. If set to 0 no pruning is done |
tilesize |
integer. Size of the tiles during the tile-wise processing |
mode |
processing mode, either 'vector' or 'raster'. See details |
mask |
an optional raster used for masking the segmentation. Only pixels whose mask is strictly positive will be segmented |
ram |
integer. Available memory for processing (in MB) |
Details
Mean-Shift is a region-based segmentation algorithm that groups pixels with similar characteristics. It's a non-parametric clustering technique that groups pixels based on spatial proximity and feature similarity (color, intensity). This method is particularly effective for preserving edges and defailt while simplifying textures in high-resolution images. Steps:
Initialization: Each pixel is treated as a point in a multi-dimensional space (combining spatial and color features).
Mean Shift Iterations: For each pixel, a search window moves toward the region with the highest data density (local maxima) by calculating the mean of neighboring pixels within the window.
Convergence: The process repeats until the movement of the window becomes negligible, indicating convergence.
Label Assignment: Pixels that converge to the same mode (local maxima) are grouped into the same region.
The most important parameters are:
spatialr: defines the size of the neighborhood
ranger: determines similarity in the feature space
maxiter: limits the number of iterations for convergence
thresh: defines the convergence criterion based on pixel movement
The processing mode 'vector' will output a vector file, and process the input image piecewise. This allows performing segmentation of very large images. IN contrast, 'raster' mode will output a labeled raster, and it cannot handle large data. If mode is 'raster', all the 'vector_*' arguments are ignored.
Value
sf or SpatRaster
Examples
## Not run:
## load packages
library(link2GI)
library(OTBsegm)
library(terra)
## load sample image
image_sr <- rast(system.file("raster/pnoa.tiff", package = "OTBsegm"))
## connect to OTB (change to your directory)
otblink <- link2GI::linkOTB(searchLocation = "C:/OTB/")
## apply segmentation
results_ms_sf <- segm_lsms(
image = image_sr,
otb = otblink,
spatialr = 5,
ranger = 25,
minsize = 10
)
plotRGB(image_sr)
plot(st_geometry(results_ms_sf), add = TRUE)
## End(Not run)
Mean-Shift Segmentation
Description
Applies the mean-shift segmentation algorithm to an image file or a SpatRaster
Usage
segm_meanshift(
image,
otb,
spatialr = 5L,
ranger = 15,
thresh = 0.1,
maxiter = 100L,
minsize = 100L,
mode = "vector",
vector_neighbor = FALSE,
vector_stitch = TRUE,
vector_minsize = 1L,
vector_simplify = 0.1,
vector_tilesize = 1024L,
mask = NULL
)
Arguments
image |
path or |
otb |
output of |
spatialr |
integer. Spatial radius of the neighborhood |
ranger |
range radius defining the radius (expressed in radiometry unit) in the multispectral space |
thresh |
algorithm iterative scheme will stop if mean-shift vector is below this threshold or if iteration number reached maximum number of iterations |
maxiter |
integer. Algorithm iterative scheme will stop if convergence hasn’t been reached after the maximum number of iterations |
minsize |
integer. Minimum size of a region (in pixel unit) in segmentation. Smaller clusters will be merged to the neighboring cluster with the closest radiometry. If set to 0 no pruning is done |
mode |
processing mode, either 'vector' or 'raster'. See details |
vector_neighbor |
logical. If FALSE (the default) a 4-neighborhood connectivity is activated. If TRUE, a 8-neighborhood connectivity is used |
vector_stitch |
logical. If TRUE (the default), scans polygons on each side of tiles and stitch polygons which connect by more than one pixel |
vector_minsize |
integer. Objects whose size in pixels is below the minimum object size will be ignored during vectorization |
vector_simplify |
simplify polygons according to a given tolerance (in pixel). This option allows reducing the size of the output file or database. |
vector_tilesize |
integer. User defined tiles size for tile-based segmentation. Optimal tile size is selected according to available RAM if NULL |
mask |
an optional raster used for masking the segmentation. Only pixels whose mask is strictly positive will be segmented |
Details
Mean-Shift is a region-based segmentation algorithm that groups pixels with similar characteristics. It's a non-parametric clustering technique that groups pixels based on spatial proximity and feature similarity (color, intensity). This method is particularly effective for preserving edges and defailt while simplifying textures in high-resolution images. Steps:
Initialization: Each pixel is treated as a point in a multi-dimensional space (combining spatial and color features).
Mean Shift Iterations: For each pixel, a search window moves toward the region with the highest data density (local maxima) by calculating the mean of neighboring pixels within the window.
Convergence: The process repeats until the movement of the window becomes negligible, indicating convergence.
Label Assignment: Pixels that converge to the same mode (local maxima) are grouped into the same region.
The most important parameters are:
spatialr: defines the size of the neighborhood
ranger: determines similarity in the feature space
maxiter: limits the number of iterations for convergence
thresh: defines the convergence criterion based on pixel movement
The processing mode 'vector' will output a vector file, and process the input image piecewise. This allows performing segmentation of very large images. IN contrast, 'raster' mode will output a labeled raster, and it cannot handle large data. If mode is 'raster', all the 'vector_*' arguments are ignored.
Value
sf
or SpatRaster
Examples
## Not run:
## load packages
library(link2GI)
library(OTBsegm)
library(terra)
## load sample image
image_sr <- rast(system.file("raster/pnoa.tiff", package = "OTBsegm"))
## connect to OTB (change to your directory)
otblink <- link2GI::linkOTB(searchLocation = "C:/OTB/")
## apply segmentation
results_ms_sf <- segm_meanshift(
image = image_sr,
otb = otblink,
spatialr = 5,
ranger = 25,
maxiter = 10,
minsize = 10
)
## End(Not run)
Morphological profiles segmentation
Description
Applies the morphological profiles segmentation algorithm to an image file or a SpatRaster
Usage
segm_mprofiles(
image,
otb,
size = 5L,
start = 1L,
step = 1L,
sigma = 1,
mode = "vector",
vector_neighbor = FALSE,
vector_stitch = TRUE,
vector_minsize = 1L,
vector_simplify = 0.1,
vector_tilesize = 1024L,
mask = NULL
)
Arguments
image |
path or |
otb |
output of |
size |
integer. Size of the profiles |
start |
integer. Initial radius of the structuring element in pixels |
step |
integer. Radius step in pixels along the profile |
sigma |
profiles values under the threshold will be ignored |
mode |
processing mode, either 'vector' or 'raster'. See details |
vector_neighbor |
logical. If FALSE (the default) a 4-neighborhood connectivity is activated. If TRUE, a 8-neighborhood connectivity is used |
vector_stitch |
logical. If TRUE (the default), scans polygons on each side of tiles and stitch polygons which connect by more than one pixel |
vector_minsize |
integer. Objects whose size in pixels is below the minimum object size will be ignored during vectorization |
vector_simplify |
simplify polygons according to a given tolerance (in pixel). This option allows reducing the size of the output file or database. |
vector_tilesize |
integer. User defined tiles size for tile-based segmentation. Optimal tile size is selected according to available RAM if NULL |
mask |
an optional raster used for masking the segmentation. Only pixels whose mask is strictly positive will be segmented |
Details
The morphological profiles segmentation algorithm is a region-based image segmentation technique that applies a series of morphological operations using structuring elements of increasing size to capture spatial patterns and textures within the image. Steps:
Morphological Filtering: The algorithm applies a sequence of openings (removing small bright structures) and closings (removing small dark structures) to the input image using structuring elements (e.g., disks, rectangles).
Profile Generation: It generates a profile for each pixel by recording the response of the morphological operations at different scales.
Feature Extraction: These profiles help capture both fine and coarse structures within the image, creating a set of features that can be used for classification or segmentation.
Segmentation (Optional): The extracted profiles can be input into a classifier or segmentation algorithm to differentiate between regions with distinct spatial characteristics.
The processing mode 'vector' will output a vector file, and process the input image piecewise. This allows performing segmentation of very large images. IN contrast, 'raster' mode will output a labeled raster, and it cannot handle large data. If mode is 'raster', all the 'vector_*' arguments are ignored.
Value
sf
or SpatRaster
Examples
## Not run:
## load packages
library(link2GI)
library(OTBsegm)
library(terra)
## load sample image
image_sr <- rast(system.file("raster/pnoa.tiff", package = "OTBsegm"))
## connect to OTB (change to your directory)
otblink <- link2GI::linkOTB(searchLocation = "C:/OTB/")
## apply segmentation
results_ms_sf <- segm_mprofiles(
image = image_sr,
otb = otblink,
size = 5,
start = 3,
step = 20,
sigma = 1
)
## End(Not run)
Watershed segmentation
Description
Applies the watershed segmentation algorithm to an image file or a SpatRaster
Usage
segm_watershed(
image,
otb,
thresh = 0.01,
level = 0.1,
mode = "vector",
vector_neighbor = FALSE,
vector_stitch = TRUE,
vector_minsize = 1L,
vector_simplify = 0.1,
vector_tilesize = 1024L,
mask = NULL
)
Arguments
image |
path or |
otb |
output of |
thresh |
depth threshold units in percentage of the maximum depth in the image |
level |
flood level for generating the merge tree from the initial segmentation (from 0 to 1) |
mode |
processing mode, either 'vector' or 'raster'. See details |
vector_neighbor |
logical. If FALSE (the default) a 4-neighborhood connectivity is activated. If TRUE, a 8-neighborhood connectivity is used |
vector_stitch |
logical. If TRUE (the default), scans polygons on each side of tiles and stitch polygons which connect by more than one pixel |
vector_minsize |
integer. Objects whose size in pixels is below the minimum object size will be ignored during vectorization |
vector_simplify |
simplify polygons according to a given tolerance (in pixel). This option allows reducing the size of the output file or database. |
vector_tilesize |
integer. User defined tiles size for tile-based segmentation. Optimal tile size is selected according to available RAM if NULL |
mask |
an optional raster used for masking the segmentation. Only pixels whose mask is strictly positive will be segmented |
Details
The watershed segmentation algorithm is a region-based image segmentation technique inspired by topography. It treats the grayscale intensity of an image as a topographic surface, where brighter pixels represent peaks and darker pixels represent valleys. The algorithm simulates flooding of this surface to separate distinct regions. Steps:
Topographic Interpretation: The input image is treated as a 3D landscape, where pixel intensity corresponds to elevation.
Flooding Process: Starting from local minima, the algorithm simulates water flooding the surface. As the water rises, distinct regions (basins) are formed.
Watershed Lines: When two basins meet, a boundary (watershed line) is formed to prevent merging.
Region Labeling: Each basin is assigned a unique label, producing a segmented image where boundaries are clearly defined.
The processing mode 'vector' will output a vector file, and process the input image piecewise. This allows performing segmentation of very large images. IN contrast, 'raster' mode will output a labeled raster, and it cannot handle large data. If mode is 'raster', all the 'vector_*' arguments are ignored.
Value
sf
or SpatRaster
Examples
## Not run:
## load packages
library(link2GI)
library(OTBsegm)
library(terra)
## load sample image
image_sr <- rast(system.file("raster/pnoa.tiff", package = "OTBsegm"))
## connect to OTB (change to your directory)
otblink <- link2GI::linkOTB(searchLocation = "C:/OTB/")
## apply segmentation
results_ms_sf <- segm_watershed(
image = image_sr,
otb = otblink,
thresh = .1,
level = .2
)
## End(Not run)