I am currently implementing an algorithm for identifying the axis of minimum inertia of a colored mass (provided by the second moments). In order to do so, I need to acquire the centre of mass, as given by the first moments.

The weighted averaging function works well, but due to outlier pixels, I am receiving undesired results.

Here is the averaging function:

(e.g. x's weighted average)

```
for (i = 0, i < rows, i++) {
for (j = 0, j < cols, j++) {
if (colorAt(i,j).isForeground()) {
tempSumX++;
totalForeground++;
}
}
x_ += i*tempSumX;
tempSumX = 0;
}
x_ /= totalForeground; //where x_ represents the x coordinate of the weighted center of mass.
```

Given an image such as this, which is represented by exclusively two colors (background and foreground), how can I remove outlying pixels? Note: Outlying pixels refers to anything not part of the big color-mass. The white dot is the calculated center of mass, which is incorrect.

Much appreciated.