**Can ggplot2 be used to produce a so-called topoplot (often used in neuroscience)?**

Sample data:

```
label x y signal
1 R3 0.64924459 0.91228430 2.0261520
2 R4 0.78789621 0.78234410 1.7880972
3 R5 0.93169511 0.72980685 0.9170998
4 R6 0.48406513 0.82383895 3.1933129
```

Rows represent individual electrodes. Columns `x`

and `y`

represent the projection into 2D space and the column `signal`

is essentially the z-axis representing voltage measured at a given electrode.

`stat_contour`

doesn't work, apparently due to unequal grid.

`geom_density_2d`

only provides a density estimation of `x`

and `y`

.

`geom_raster`

is one not fitted for this task or I must be using it incorrectly since it quickly runs out of memory.

Smoothing (like in the image on the right) and head contours (nose, ears) aren't necessary.

I want to avoid Matlab and transforming the data so that it fits this or that toolbox… Many thanks!

## Update (26 January 2016)

The closest I've been able to get to my objective is via

```
library(colorRamps)
ggplot(channels, aes(x, y, z = signal)) + stat_summary_2d() + scale_fill_gradientn(colours=matlab.like(20))
```

which produces an image like this:

## Update 2 (27 January 2016)

I've tried @alexforrence's approach with full data and this is the result:

It's a great start but there is a couple of issues:

- The last call (
`ggplot()`

) takes about 40 seconds on an Intel i7 4790K while Matlab toolboxes manage to generate these almost instantly; my ‘emergency solution’ above takes about a second. - As you can see, the upper and lower border of the central part appear to be ‘sliced’ – I'm not sure what causes this but it could be the third issue.
I'm getting these warnings:

`1: Removed 170235 rows containing non-finite values (stat_contour). 2: Removed 170235 rows containing non-finite values (stat_contour).`

## Update 3 (27 January 2016)

Comparison between two plots produced with different `interp(xo, yo)`

and `stat_contour(binwidth)`

values:

Ragged edges if one chooses low `interp(xo, yo)`

, in this case `xo`

/`yo = seq(0, 1, length = 100)`

: