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I have a scanario : I have the data of some GPS Tracks( longitutdes, latitudes ) and these are contained in 2 parts

First part containing the data ( Longitudes and Latitudes ) which are the journey stations ( These are actual coordinates and they must be visited when the bus starts its journey )

Second Part containing the GPS coordinates ( Longitude and Latitude )but probably 2 times more then 1st part. Everytime when bus starts its journey , it stops these station( of whome coordinates have been given ). I want to compare that bus completed its journey Or not by comparing its visited GPS stations ( realtime cooridnates ) with the first part (schedualed Coordinates ).

But My Problem :

I have almost double coordiantes in the second part and all those are very very close with each other and almost 5-8 coordinates represents the same station..( e.g 104578,105888 ) and ( 104579,105890 )

What would be the right and possible way to declare that certain no of coordiantes are representing the same station. This problem probably can be solved out using K Nearest Neighbour or K Means somehow.

This problem seems to be not well defined..But I think on query I would try to explain more.

Thanks Usman

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up vote 0 down vote accepted

Have you consider using a simple thresholding approach? i.e. merge coordinates withing a certain distance? It seems as you are very well able to choose such a threshold.

The problem with clustering is that it will try to discover structure in your dataset.

What you seem to be interested in, is simple merging of objects that are within a certain distance. There is no "structure" that you want to discover. You want to do preprocessing, not clustering.

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You can use a spatial index with lat lng pairs. Then you can look for close points on the curve and group them together. A spatial index is often a space filling curve or a quadtree. It uses a quadkey to index the 2 dimension and reduce it to 1 dimension. It also preserve some spatial information and can be use for many things. Read more about it in Nick's spatial index quadtree hilbert blog.

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Create a convex hull polygon of the second part coordinates maybe with a buffer so it takes a larger area so you can account for GPS errors and do point in polygon search.

Or just use radius distance with the scheduled point as the center.

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