# Selecting data based on the distance from a query point in Matlab

I have a data-set that has four columns [X Y Z C]. I would like to find all the C values that are in a given sphere centered at [X, Y, Z] with a radius r. What is the best approach to address this problem? Should I use the clusterdata command?

-

Here is one solution that uses naively euclidean distance:

say `V = [X Y Z C]` is your dataset, `Center = [x,y,z]` is the center of the sphere, then

``````dist = bsxfun(@minus,V(:,1:3),Center);  % // finds the distance vectors
% // between the points and the center
dist = sum(dist.^2,2); % // evaluate the squares of the euclidean distances (scalars)
idx = (dist < r^2);    % // Find the indexes of the matching points
``````

The good `C` values are

`````` good = V(idx,4);  % // here I kept just the C column
``````
-
This worked! Thanks Acorbe. –  Cerberus Dec 12 '12 at 21:51
Instead, what you are doing, is commonly called a "range query" or "radius query". In classic database terms, a `SELECT`, with a distance selector.
I don't know if there is any good index structures package for Matlab. But in general, at 3D, this can be well accelerated with index structures. Computing all distances is `O(n)`, but with an index structure only `O(log n)`.