The **SearchTrees** package offers one solution. Quoting from its documentation, it, "provides an implementation of the QuadTree data structure [which it] uses to implement fast k-Nearest Neighbor [...] lookups in two dimensions."

Here's how you could use it to quickly find, for each point in a `SpatialPoints`

object **b**, the two nearest points in a second `SpatialPoints`

object **B**

```
library(sp)
library(SearchTrees)
## Example data
set.seed(1)
A <- SpatialPoints(cbind(x=rnorm(100), y=rnorm(100)))
B <- SpatialPoints(cbind(x=c(-1, 0, 1), y=c(1, 0, -1)))
## Find indices of the two nearest points in A to each of the points in B
tree <- createTree(coordinates(A))
inds <- knnLookup(tree, newdat=coordinates(B), k=2)
## Show that it worked
plot(A, pch=1, cex=1.2)
points(B, col=c("blue", "red", "green"), pch=17, cex=1.5)
## Plot two nearest neigbors
points(A[inds[1,],], pch=16, col=adjustcolor("blue", alpha=0.7))
points(A[inds[2,],], pch=16, col=adjustcolor("red", alpha=0.7))
points(A[inds[3,],], pch=16, col=adjustcolor("green", alpha=0.7))
```

`spDists`

in the`sp`

package might work for what you want. It's first two arguments appear to be different matrices that could be used to represent two sets of points as in your example. Worth a look anyway. – lmo May 19 '16 at 20:59