I am trying to do a function that takes a list of circles, and returns only a list of circles that are fully overlapped (one inside another). The problem is that the algorithm is at least **O(n²)**, due to the nested for's in getConcentricCircles function, and taking ages for large datasets. Is there any way to optimize it?

**EDIT:** I don't know if this would help, but I use the algorithm to detect false positives in iris and pupil detection. If a circle is fully inside another circle, it is likely that that is the pupil and the outside is the iris. They should be concentric, what would simplifiy a lot, but it happens that the pupil in the human eye is not exactly in the center of the iris, that is why I do this.

**EDIT 2:** I have replaced isCircleInCircle with Peter Lawrey's solution, mine was not correct for some cases

Function to check if a circle is inside a circle:

```
private static boolean isCircleInCircle(Circle a, Circle b) {
// the circle is inside if the distance between the centre is less than the difference in the radius
double dx = a.getX() - b.getX();
double dy = a.getY() - b.getY();
double radiusDifference = a.getRadius() - b.getRadius();
double centreDistanceSquared = dx*dx + dy*dy; // edited
return radiusDifference * radiusDifference > centreDistanceSquared;
}
```

Then I check every element of the list with each other, and save only the overlapping circles (and the overlapped circle):

```
public HashSet<Circle> getConcentricCircles(List<Circle> circleList) {
HashSet<Circle> toReturn = new HashSet<Circle>();
for (Circle circle : circleList) {
for (Circle toCheck : circleList) {
// if the circles are not the same and one is inside another,
if (!toCheck.equals(circle) && isCircleInCircle(circle, toCheck)) {
// add both to the hashset
toReturn.add(circle);
toReturn.add(toCheck);
}
}
}
return toReturn;
}
```

`Math.pow(x, 2)`

is more 10x more expensive than`x * x`

If you compare the square of`outsideRadius`

you can avoid performing a`sqrt`

as well. – Peter Lawrey Oct 18 '12 at 9:46`Math.exp(math.log(x) * 2)`

– Peter Lawrey Oct 18 '12 at 9:52