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R package nabor wraps libnabo, a fast K Nearest Neighbour library for low-dimensional spaces implemented in templated C++. In comparison with the widely used ANN library (wrapped by the RANN R package), libnabo is reported to be 5% to 20% faster with more compact data structures.
# install (see below for details)
install.packages("nabor")
# use
library(nabor)
# help
?nabor
?knn
# run examples
example(knn)
example(WKNN)
# run tests
library(testthat)
test_package("nabor")
# cite
citation("nabor")
For R users nabor provides a function,
knn
, that is a drop in replacement for the nn2
function in the RANN R package. I
have seen speedups of 2-3x fold for queries of interest (a few thousand
points in 3d, k=1) when comparing nabor::knn and RANN::nn2. See
?knn
for details.
Furthermore nabor provides a mechanism for reusing
the k-d search tree structure for multiple queries. This is achieved by
wrapping a libnabo k-d tree and associated points into a C++ class. This
in turn is wrapped as an R reference class (by RcppModules) that can be
used in R. See ?WKNN
for details. The WKNNF
class has the additional feature of using floats (4 bytes per
coordinate) for the underlying storage, rather than the doubles used by
R; this may be useful for large pointsets. ## Installation ### Released
version from CRAN The current stable version of the package is available
from CRAN. The package
requires compilation, but installing from CRAN allows mac and windows
users without the full C++ compiler toolchain to install binary
packages.
install.packages("nabor")
The nabor package is known to compile from source with the standard C(++) compiler toolchains for R under MacOS X, Windows and Linux. See https://www.rstudio.com/products/rpackages/devtools/ for details of the developer toolchains needed for your platform.
Once you have installed the appropriate developer toolchain mentioned above, you can use the devtools package to install the development version of the package:
if (!require("devtools")) install.packages("devtools")
::install_github("jefferis/nabor") devtools
The nabor package includes libnabo and all of its dependencies (boost, via package BH) and Eigen (via package RcppEigen) and does not depend on any non-standard system libraries. It should therefore run out of the box on any mac/linux/windows system.
libnabo and therefore the nabor R package are released under the BSD 3 clause license. If you make use of nabor please cite the original authors:
> citation('nabor')
Elseberg J, Magnenat S, Siegwart R and Nüchter A (2012). “Comparison of nearest-neighbor-search
strategies and implementations for efficient shape registration.” _Journal of Software Engineering for
Robotics (JOSER)_, *3*(1), pp. 2-12. ISSN 2035-3928.
A BibTeX entry for LaTeX users is
@Article{elsebergcomparison,
title = {Comparison of nearest-neighbor-search strategies and implementations for efficient shape registration},
author = {J. Elseberg and S. Magnenat and R. Siegwart and A. N{\"u}chter},
journal = {Journal of Software Engineering for Robotics (JOSER)},
pages = {2--12},
volume = {3},
number = {1},
year = {2012},
issn = {2035-3928},
}
nabor also makes use of the tremendous Rcpp and RcppEigen packages – kudos to their authors!
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.