Find Restaurants with Geospatial Queries

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Overview

MongoDB’sgeospatialindexing allows you to efficiently execute spatial queries on a collection that contains geospatial shapes and points. This tutorial will briefly introduce the concepts of geospatial indexes, and then demonstrate their use with$geoWithin,$geoIntersects, andgeoNear.

To showcase the capabilities of geospatial features and compare different approaches, this tutorial will guide you through the process of writing queries for a simple geospatial application.

Suppose you are designing a mobile application to help users find restaurants in New York City. The application must:

  • Determine the user’s current neighborhood using $geoIntersects ,
  • Show the number of restaurants in that neighborhood using $geoWithin , and
  • Find restaurants within a specified distance of the user using $nearSphere .

This tutorial will use a2dsphereindex to query for this data on spherical geometry.

For more information on spherical and flat geometries, seeGeospatial Models.

Distortion

Spherical geometry will appear distorted when visualized on a map due to the nature of projecting a three dimensional sphere, such as the earth, onto a flat plane.

For example, take the specification of the spherical square defined by the longitude latitude points(0,0),(80,0),(80,80), and(0,80). The following figure depicts the area covered by this region:

Searching for Restaurants

Prerequisites

Download the example datasets fromhttps://raw.githubusercontent.com/mongodb/docs-assets/geospatial/neighborhoods.jsonandhttps://raw.githubusercontent.com/mongodb/docs-assets/geospatial/restaurants.json. These contain the collectionsrestaurantsandneighborhoodsrespectively.

After downloading the datasets, import them into the database:

mongoimport
<
path
to
restaurants
.
json
>
-
c
restaurants
mongoimport
<
path
to
neighborhoods
.
json
>
-
c
neighborhoods

ThegeoNearcommand requires a geospatial index, and almost always improves performance of$geoWithinand$geoIntersectsqueries.

Because this data is geographical, create a2dsphereindex on each collection using themongoshell:

db
.
restaurants
.
createIndex
({
location
:
"2dsphere"
})
db
.
neighborhoods
.
createIndex
({
geometry
:
"2dsphere"
})

Exploring the Data

Inspect an entry in the newly-createdrestaurantscollection from within themongoshell:

db
.
restaurants
.
findOne
()

This query returns a document like the following:

{
location
:
{
type
:
"Point"
,
coordinates
:
[
-
73.856077
,
40.848447
]
},
name
:
"Morris Park Bake Shop"
}

This restaurant document corresponds to the location shown in the following figure:

Because the tutorial uses a2dsphereindex, the geometry data in thelocationfield must follow theGeoJSON format.

Now inspect an entry in theneighborhoodscollection:

db
.
neighborhoods
.
findOne
()

This query will return a document like the following:

{
geometry
:
{
type
:
"Polygon"
,
coordinates
:
[[
[
-
73.99
,
40.75
],
...
[
-
73.98
,
40.76
],
[
-
73.99
,
40.75
]
]]
},
name
:
"Hell's Kitchen"
}

This geometry corresponds to the region depicted in the following figure:

Find the Current Neighborhood

Assuming the user’s mobile device can give a reasonably accurate location for the user, it is simple to find the user’s current neighborhood with$geoIntersects.

Suppose the user is located at -73.93414657 longitude and 40.82302903 latitude. To find the current neighborhood, you will specify a point using the special$geometryfield inGeoJSONformat:

db
.
neighborhoods
.
findOne
({
geometry
:
{
$geoIntersects
:
{
$geometry
:
{
type
:
"Point"
,
coordinates
:
[
-
73.93414657
,
40.82302903
]
}
}
}
})

This query will return the following result:

{
"_id"
:
ObjectId
(
"55cb9c666c522cafdb053a68"
),
"geometry"
:
{
"type"
:
"Polygon"
,
"coordinates"
:
[
[
[
-
73.93383000695911
,
40.81949109558767
],
...
]
]
},
"name"
:
"Central Harlem North-Polo Grounds"
}

Find all Restaurants in the Neighborhood

You can also query to find all restaurants contained in a given neighborhood. Run the following in themongoshell to find the neighborhood containing the user, and then count the restaurants within that neighborhood:

var
neighborhood
=
db
.
neighborhoods
.
findOne
(
{
geometry
:
{
$geoIntersects
:
{
$geometry
:
{
type
:
"Point"
,
coordinates
:
[
-
73.93414657
,
40.82302903
]
}
}
}
}
)
db
.
restaurants
.
find
(
{
location
:
{
$geoWithin
:
{
$geometry
:
neighborhood
.
geometry
}
}
}
).
count
()

This query will tell you that there are 127 restaurants in the requested neighborhood, visualized in the following figure:

Find Restaurants within a Distance

To find restaurants within a specified distance of a point, you can use either$geoWithinwith$centerSphereto return results in unsorted order, ornearSpherewith$maxDistanceif you need results sorted by distance.

Unsorted with$geoWithin

To find restaurants within a circular region, use$geoWithinwith$centerSphere.$centerSphereis a MongoDB-specific syntax to denote a circular region by specifying the center and the radius in radians.

$geoWithindoes not return the documents in any specific order, so it may show the user the furthest documents first.

The following will find all restaurants within five miles of the user:

db
.
restaurants
.
find
({
location
:
{
$geoWithin
:
{
$centerSphere
:
[
[
-
73.93414657
,
40.82302903
],
5
/
3963.2
]
}
}
})

$centerSphere’s second argument accepts the radius in radians, so you must divide it by the radius of the earth in miles. SeeCalculate Distance Using Spherical Geometryfor more information on converting between distance units.

Sorted with$nearSphere

You may also use$nearSphereand specify a$maxDistanceterm in meters. This will return all restaurants within five miles of the user in sorted order from nearest to farthest:

var
METERS_PER_MILE
=
1609.34
db
.
restaurants
.
find
({
location
:
{
$nearSphere
:
{
$geometry
:
{
type
:
"Point"
,
coordinates
:
[
-
73.93414657
,
40.82302903
]
},
$maxDistance
:
5
*
METERS_PER_MILE
}
}
})

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