So I have an iterative closest point (ICP) algorithm that has been written and will fit a model to a point cloud. As a quick tutorial for those not in the know ICP is a simple algorithm that fits points to a model ultimately providing a homogeneous transform matrix between the model and points.

Here is a quick picture tutorial.

Step 1. Find the closest point in the model set to your data set:

Step 2: Using a bunch of fun maths (sometimes based on gradiant descent or SVD) pull the clouds closer together and repeat untill a pose is formed:

![Figure 2][2]

Now that bit is simple and working, what i would like help with is:
**How do I tell if the pose that I have is a good one?**

So currently I have two ideas, but they are kind of hacky:

How many points are in the ICP Algorithm. Ie, if I am fitting to almost no points, I assume that the pose will be bad:

But what if the pose is actually good? It could be, even with few points. I dont want to reject good poses. In fact from experimentation , with a good seed few points is actually better, but if the seed is bad then it is no good!

So what we see here is that low points can actually make a very good position if they are in the right place.

So the other metric investigated was the ratio of the supplied points to the used points. Here's an example

Now we exlude points that are too far away because they will be outliers, now this means we need a good starting position for the ICP to work, but i am ok with that. Now in the above example the assurance will say NO, this is a bad pose, and it would be right because the ratio of points vs points included is:

```
2/11 < SOME_THRESHOLD
```

So thats good, but it will fail in the case shown above where the triangle is upside down. It will say that the upside down triangle is good because all of the points are used by ICP.

You **don't** need to be an expert on ICP to answer this question, i am looking for good ideas. Using knowledge of the points how can we classify whether it is a good pose solution or not?

Using both of these solutions together in tandem is a good suggestion but its a pretty lame solution if you ask me, very dumb to just threshold it.

What are some good ideas for how to do this?

PS. If you want to add some code, please go for it. I am working in c++.

PPS. Someone help me with tagging this question I am not sure where it should fall.