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Compute the hull of each segmented tree. The hull can be convex, concave or a bounding box (see details and references).
tree_hulls(las, type = c("convex", "concave", "bbox"), concavity = 3,
length_threshold = 0, func = NULL, attribute = "treeID")
An object of class LAS or LAScatalog.
character. Hull type. Can be 'convex', 'concave' or 'bbox'.
numeric. If type = "concave"
, a relative measure of concavity. 1 results
in a relatively detailed shape, Infinity results in a convex hull.
numeric. If type = "concave"
, when a segment length is below this
threshold, no further detail is added. Higher values result in simpler shapes.
formula. An expression to be applied to each tree. It works like in grid_metrics grid_metrics3d or tree_metrics and computes, in addition to the hulls a set of metrics for each tree.
character. The attribute where the ID of each tree is stored. In lidR, the default is "treeID".
A SpatialPolygonsDataFrame
. If a tree has less than 4 points it is not considered.
This section appears in each function that supports a LAScatalog as input.
In lidR
when the input of a function is a LAScatalog the
function uses the LAScatalog processing engine. The user can modify the engine options using
the available options. A careful reading of the
engine documentation is recommended before processing LAScatalogs
. Each
lidR
function should come with a section that documents the supported engine options.
The LAScatalog
engine supports .lax
files that significantly improve the computation
speed of spatial queries using a spatial index. Users should really take advantage a .lax
files,
but this is not mandatory.
Supported processing options for a LAScatalog
(in bold). For more details see the
LAScatalog engine documentation:
chunk size: How much data is loaded at once.
chunk buffer*: Mandatory to get a continuous output without edge effects. The buffer is always removed once processed and will never be returned either in R or in files.
chunk alignment: Align the processed chunks.
progress: Displays a progression estimation.
output_files: Supported templates are {XLEFT}
, {XRIGHT}
,
{YBOTTOM}
, {YTOP}
, {XCENTER}
, {YCENTER}
{ID}
and,
if chunk size is equal to 0 (processing by file), {ORIGINALFILENAME}
.
select: Load only attributes of interest.
filter: Read only points of interest.
The concave hull method under the hood is described in Park & Oh (2012). The function relies on the concaveman function which itself is a wrapper around Vladimir Agafonking's implementation.
Park, J. S., & Oh, S. J. (2012). A new concave hull algorithm and concaveness measure for n-dimensional datasets. Journal of Information science and engineering, 28(3), 587-600.
# NOT RUN {
LASfile <- system.file("extdata", "MixedConifer.laz", package="lidR")
las = readLAS(LASfile, select = "xyz0", filter = "-drop_z_below 0")
# NOTE: This dataset is already segmented
# plot(las, color = "treeID", colorPalette = pastel.colors(200))
# Only the hulls
convex_hulls = tree_hulls(las)
plot(convex_hulls)
# The hulls + some user-defined metrics
convex_hulls = tree_hulls(las, func = ~list(Zmax = max(Z)))
spplot(convex_hulls, "Zmax")
# The bounding box
bbox_hulls = tree_hulls(las, "bbox")
plot(bbox_hulls)
# }
# NOT RUN {
concave_hulls = tree_hulls(las, "concave")
sp::plot(concave_hulls)
# }
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