I'm trying to create a mobile application, that capture the user current geopoint(lat/long) send it to a web service and the web service returns the 5 nearest geopoints from the a long list. What i don't have clear is how can i get the 5 nearest geopoints (my initial approach was, getting all the points from the datebase then calculate the distance between each geopoint and the user geopoint and provide with the 5 nearest to him) that is not so costly proccesing wise. Any suggestion on how could i do it? If need more info let me know so i can repost.
There are a number of ways to do this, and how optimal you need this to be will likely depend on the number of points you have (so it scales well).
For spatial queries, you should use a database that supports spatial indexing, which allows for much faster searches. PostGIS is one example, and there are GIS extensions for MySQL http://dev.mysql.com/doc/refman/5.0/en/spatial-extensions.html.
Here is a sample solution to the k-nearest-neighbor problem in PostGIS http://www.bostongis.com/?content_name=postgis_nearest_neighbor_generic
EDIT: You can also use techniques that use geohashing (http://en.wikipedia.org/wiki/Geohash), but be sure to read the limitations carefully in this article.
In our contact adress search on esperanto.de we use a variant of this SQL statement (wrapped in PHP syntax):
to filter all entries within a given distance (
The core is the distance calculation depending on longitude and latitude (in degrees) here:
(The result is the distance in kilometers.)
I'm not sure if this formula works universally or is somehow approximate for Germany (or only smaller distances - I think it will calculate a too big distance when one point is north and the other south of the equator with similar absolute latitudes ... and also when there is a big east-west difference).
Of course, this will get quite slow if you have many points - then you'll either have to do some pre-filtering like in iluxas answer, or better use a database with spatial indexing.
syntax very approximate, of course