# Binning and averaging huge pointcloud in Matlab

I have a huge 3D pointcloud, [3x40e6]. It's a pointcloud of a flat surface, so it's more like 2.5D in that sense. I would like to bin the pointcloud into a fixed mesh range so that i can just put it into a 2D matrix and view it with imagesc(mymap).

I did solve this problem, but it takes too long. This is what i got so far. It works fine but takes 10 minutes. It interpolates all kind of jive and i don't need that.

``````xlin=linspace(min(xx),max(xx),meshsz*dxxyy);
ylin=linspace(min(yy),max(yy),meshsz);
[X,Y]=meshgrid(xlin,ylin);
disp('+ Flattening (X,Y,Z) information into 2D (X,Y)(Z) mesh..')
%Fit to 2D grid (takes a long time)
Z=griddata(xx,yy,zz,X,Y);%,'cubic');
``````

What i would really want to do is bin all the data from my [3xN] vector into my specific 2D range map. I guess i would have to bin all the values into that map (there are some excellent and fast binning algorithms) but i would also need the specific Z-coordinate scalars in there because that's what i want to average in each bin.

Thanks!

-
Probably it's something with the command '[n,bin] = histc(...)' using the bin variable. –  TimZaman Jan 19 '13 at 14:08
yidx=[min(y):dy:max(y)]; xidx=[min(x):dx:max(x)]; [nx,binx] = histc(x,xidx) [ny,biny] = histc(y,yidx) –  TimZaman Jan 19 '13 at 14:22

Here's how you can do it in one step. `accumarray` allows you to easily swap the function you use for combining the data, so that you ca use e.g. `std` to see the local variability, or `numel` to see the counts in each bin.

``````%# transform your x,y coordinates to pixel (=bin) values
minX = min(xx);
maxX = max(xx);
minY = min(yy);
maxY = max(yy);

targetSize = [512 512];

xxBin = round( (xx-minX)/(maxX-minX)*(targetSize(1)-1) ) +1;
yyBin = round( (yy-minY)/(maxY-minY)*(targetSize(2)-1) ) +1;

%# map by using accumarray, take the mean of each bin
map = accumarray([xxBin(:),yyBin(:)],zz,targetSize,@mean,0);
``````
-

Solved. Takes 200ms per million points.

``````yidx=[min(yy):dy:max(yy)];
xidx=[min(xx):dx:max(xx)];
ZmapSum=zeros(length(yidx),length(xidx));
ZmapIdx=zeros(size(ZmapSum));

[nx,binx] = histc(xx,xidx);
[ny,biny] = histc(yy,yidx);
%bin==0 means the value is out of range
binx=binx+1; biny=biny+1;
%binzero=( (binx==0) | (biny==0) );
%binx(binzero) = [];
%biny(binzero) = [];
%xx(binzero) = [];
%yy(binzero) = [];
%zz(binzero) = [];

%binx and biny give their respective bin locations
for i=1:1:length(xx)
ZmapSum(biny(i),binx(i))=ZmapSum(biny(i),binx(i))+zz(i);
ZmapIdx(biny(i),binx(i))=ZmapIdx(biny(i),binx(i))+1;
end

Zmap=ZmapSum./ZmapIdx;
``````
-