The output from REGIONPROPS will be an N-by-1 structure array with one field `'Centroid'`

that contains a 1-by-2 array. You can first concatenate all these arrays into an N-by-2 array using the function VERTCAT. Then you can replicate your image center coordinates (assumed to be in a 1-by-2 array) using the function REPMAT so that it becomes an N-by-2 array. Now you can compute the distances using vectorized operations and find the index of the value with the minimum distance using the function MIN:

```
props = regionprops(labeledImage, 'Centroid');
centers = vertcat(props.Centroid); %# Vertically concatenate the centroids
imageCenter = [x y]; %# Your image center coordinates
origin = repmat(imageCenter,numel(props),1); %# Replicate the coordinates
squaredDistance = sum(abs(centers-origin).^2,2); %# Compute the squared distance
[~,minIndex] = min(squaredDistance); %# Find index of the minimum
```

Note that since you just want the minimum distance, you can just use the squared distances and avoid a needless call to SQRT. Also note that the function BSXFUN could be used as an alternative to replicating the image center coordinates to subtract them from the object centroids.