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r - Closest point to a path

I have two sets of points, called path and centers. For each point in path, I would like an efficient method for finding the ID of the closest point in centers. I would like to do this in R. Below is a simple reproducible example.

set.seed(1)
n <- 10000
x <- 100*cumprod(1 + rnorm(n, 0.0001, 0.002))
y <- 50*cumprod(1 + rnorm(n, 0.0001, 0.002))

path <- data.frame(cbind(x=x, y=y))

centers <- expand.grid(x=seq(0, 500,by=0.5) + rnorm(1001), 
                       y=seq(0, 500, by=0.2) + rnorm(2501))

centers$id <- seq(nrow(centers))

x and y are coordinates. I would like to add a column to the path data.frame that has the id of the closest center for the given x and y co-ordinate. I then want to get all of the unique ids.

My solution at the moment does work, but is very slow when the scale of the problem increases. I would like something much more efficient.

path$closest.id <- sapply(seq(nrow(path)), function(z){
   tmp <- ((centers$x - path[z, 'x'])^2) + ((centers$y - path[z, 'y'])^2)
   as.numeric(centers[tmp == min(tmp), 'id'])
})

output <- unique(path$closest.id)

Any help on speeding this up would be greatly appreciated.

I think data.table might help, but ideally what I am looking for is an algorithm that is perhaps a bit smarter in terms of the search, i.e. instead of calculating the distances to each center and then only selecting the minimum one... to get the id...

I am also happy to use Rcpp/Rcpp11 as well if that would help improve performance.

My minimum acceptable time to perform this kind of calculation out would be 10 seconds, but obviously faster would be better.

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1 Answer

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You can do this with nn2 from the RANN package. On my system, this computes the nearest center to each of your path points in under 2 seconds.

library(RANN)
system.time(closest <- nn2(centers[, 1:2], path, 1))

#   user  system elapsed 
#   1.41    0.14    1.55 



sapply(closest, head)

#      nn.idx   nn.dists
# [1,] 247451 0.20334929
# [2,] 250454 0.12326323
# [3,] 250454 0.28540127
# [4,] 253457 0.05178687
# [5,] 253457 0.13324137
# [6,] 253457 0.09009626

Here's another example with 2.5 million candidate points that all fall within the extent of the path points (in your example, the centers have a much larger x and y range than do the path points). It's a little slower in this case.

set.seed(1)
centers2 <- cbind(runif(2.5e6, min(x), max(x)), runif(2.5e6, min(y), max(y)))
system.time(closest2 <- nn2(centers2, path, 1))

#   user  system elapsed 
#   2.96    0.11    3.07 

sapply(closest2, head)

#       nn.idx    nn.dists
# [1,]  730127 0.025803703
# [2,]  375514 0.025999069
# [3,] 2443707 0.047259283
# [4,]   62780 0.022747930
# [5,] 1431847 0.002482623
# [6,] 2199405 0.028815865

This can be compared to the output using sp::spDistsN1 (which is much slower for this problem):

library(sp)
apply(head(path), 1, function(x) which.min(spDistsN1(centers, x)))

#       1       2       3       4       5       6 
#  730127  375514 2443707   62780 1431847 2199405 

Adding the point id to the path data.frame and reducing to unique values is trivial:

path$closest.id <- closest$nn.idx
output <- unique(path$closest.id)

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