I have large amount of temporal lat/lon.

I'm trying to find k-clusters of trajectories from this data. What is the best approach for this?

Thanks.

Edit:

How should I generate the features for my data (lat/lon + time) in order to use kmeans / hierarchical clustering?

Edit:

Hopefully this will make it clearer

Here's an example of how my data look:

Trajectory 1: lat1,lon1 at time1 lat2,lon2 at time2 ... lat55,lon55 at time55

Trajectory 2: lat343,lon343 at time343 lat344,lon344 at time344 ... lat376,lon376 at time376

And on and on (couple more trajectories).

So say I have 200 of these trajectories, I want to cluster them into 2 groups. How should I approach this?

Should I use kmeans/HAC for this or should I look at another method?

Edit:

The goal of this is to classify the trajectories into k clusters which represent k different directions of the trajectories.

Simply, I am just trying to cluster the trajectories into groups of different directions. I am not worried about their **distances** similarities.

So say the end I want to find something like this:

Direction 1: Trajectory 4 Trajectory 5 Trajectory 7

Direction 2: Trajectory 44 Trajectory 2 Trajectory 27

...

Direction 10: Trajectory 17 Trajectory 8

Note: The shapes of the trajectories are mostly lines (not straight-lines), some are looped.

Note: The lat/lon are super local to one region, so I can use a flat-earth approximation.

The directions are intended to be very coarse. How do I compute similarity between trajectories to cluster them to achieve this?

Edit:

Here is an illustration (to the best of my abilities):

I want to separate the trajectories into the directions as such.

`centroids`

and everything else.. Am I closer to your point now? – mamdouh alramadan Feb 27 '13 at 0:09