# Storing and Querying GPS Coordinates Effectively

I want to create a large database of GPS coordinates that can be queried by saying "Return all coordinates that are within 'n' metres of [this coordinate]".

I need it to be as efficient as possible so looping through all the coordinates in the database and calculating whether a coordinate is within 'n' metres wouldn't be a desired solution.

Is there an easier solution?

Thanks

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Following up on Erich - if you have your choice use PostGIS (postgresql) it's free and open source, does the queries you are describing very very quickly, runs on almost all platforms, and did I mention it is free?

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GIS databases (MS PostgreSQL etc) actually implement some data structure for two- or three dimensional region-searches (spatial indices). The simplest sturcture is the grid index, then the different search trees (kd-tree, quad-tree) with R-tree as the most frequently used (a generalized B-tree for more dimensions). These methods seem adequate.

A basic grid-index (partitioning the space into grid-cells, and searching only in the nearby cells) can be implemented easily and can reduce the search time to logarithmic. The search trees are a bit harder to implement, but there are lots of open-source implementations for lots of programming languages. However, in most cases grid indexing is efficient enough.

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I typically do this sort of query using lat/lon. Using spherical geometry, you can put a bounding box around a specific point. For example, say you have a point (X,Y) that you want all coordinates within 1 mile (conversion to meters I'll leave as an exercise for the reader). You can determine a bounding box of (X-1,Y-1),(X+1,Y+1). Then you query your points database using the BETWEEN operator (SELECT foo FROM bar WHERE LAT BETWEEN X-1 AND X+1 AND LON BETWEEN Y-1 AND Y+1). Then you do your detail distance calculation to "round the corners" of your bounding box.

The caveat is that longitude lines are closer together at the top of the sphere, so you'll get skewed results the further away you are from the equator. But it still serves to quickly filter down your results sets.

Google "Great Circle Distance" for the calculations.

EDIT: There are 0.167469 degrees of longitude per mile (it actually ranges from 0.167469 to 0.014564), and 0.014483 degrees of latitude per mile. So your bounding box is `(lat - (miles * 0.014483), lon - (miles * 0.167469)), (lat + (miles * 0.014483), lon + (miles * 0.167469))`

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If you can have your choice of DB, I would recommend the same as rwwilden and use SQL 2008 with its spatial data capabilities. If you cannot use that solution or one which includes spatial querying, you can take a look at Microsoft's own paper on Hierarchical Triangular Mesh and implement those things. The SDK for MSSQL '05 came with a whole solution for HTM out-of-the-box as well, so you could just take that and convert it to whatever platform you are looking at using.

EDIT:

Here is a more detail document explaining HTM and implementation. You can of course convert to your DB of choice. You can find the source code to a full HTM implementation in the SDK for 2005.

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