[−][src]Crate spatial_join
spatial-join provides tools to perform streaming geospatial-joins on geographic data.
Spatial Joins
Given two sequences of geospatial shapes, small and big, a
spatial-join indicates which elements of small and big
intersect. You could compute this yourself using a nested loop,
but like any good spatial-join package, this one uses
R-trees to dramatically
reduce the search space.
We're not limited to intersections only! We can also find pairs
where elements of small contain elements of big or are within
elements of big by passing different values of
Interaction.
Proximity Maps
While spatial join is a well known term, proximity map is
not. Given two sequences of shapes small and big, it just
finds all pairs of items whose distance is less than some
threshold. You set that threshold using the
max_distance method
on the Config struct.
Inputs
Inputs are sequences of shapes, and shapes must be one of the
following elements from the
geo crate:
- points,
- lines,
- line strings,
- polygons,
- rectangles,
- triangles, or
- the Geometry enum
MultiPoint, MultiLineString, and MultiPolygon are not supported.
While the geo crate makes these types generic over the
coordinate type, spatial-join only supports geo types
parametrized with std::f64 coordinate types (i.e.,
Polygon<f64>).
So what kind of sequences can you use?
- slices:
&[T], - vectors:
Vec<T>or&Vec<T>, or &geo::GeometryCollection
In addition:
- all coordinate values must be finite
LineStringsmust have at least two pointsPolygonexteriors must have at least three points
Input that doesn't meet these conditions will return an error.
Outputs
SpatialIndex::spatial_join returns Result<impl Iterator<Item=SJoinRow>, Error> where
SJoinRow gives you indexes into
small and big to find the corresponding geometries.
Alternatively, you can use SpatialIndex::spatial_join_with_geos
which returns Result<impl Iterator<Item=SJoinGeoRow>, Error>.
SJoinGeoRow differs from
SJoinRow only in the addition of big
and small
Geometry
fields so you can work directly with the source geometries without
having to keep the original sequences around. This convenience
comes at the cost of cloning the source geometries which can be
expensive for geometries that use heap storage like LineString
and Polygon.
In a similar manner, SpatialIndex::proximity_map and
SpatialIndex::proximity_map_with_geos offer
ProxMapRow and
ProxMapGeoRow iterators in their
return types. These differ from their SJoin counterparts only in
the addition of a distance field.
Examples
Here's the simplest thing: let's verify that a point intersects itself.
use spatial_join::*; use geo::{Geometry, Point}; // Create a new spatial index loaded with just one point let idx = Config::new() // Ask for a serial index that will process data on only one core .serial(vec![Geometry::Point(Point::new(1.1, 2.2))]) .unwrap(); // Creating an index can fail! let results: Vec<_> = idx .spatial_join( vec![Geometry::Point(Point::new(1.1, 2.2))], Interaction::Intersects, ) .unwrap() // spatial_join can fail, but we'll assume it won't here .collect(); // we actually get an iterator, but let's collect it into a Vector. assert_eq!( results, vec![SJoinRow { big_index: 0, small_index: 0 }] );
For a slightly more complicated, we'll take a box and a smaller box and verify that the big box contains the smaller box, and we'll do it all in parallel.
use spatial_join::*; use geo::{Coordinate, Geometry, Point, Rect}; use rayon::prelude::*; let idx = Config::new() .parallel(vec![Geometry::Rect(Rect::new( Coordinate { x: -1., y: -1. }, Coordinate { x: 1., y: 1. }, ))]) .unwrap(); let results: Vec<_> = idx .spatial_join( vec![Geometry::Rect(Rect::new( Coordinate { x: -0.5, y: -0.5 }, Coordinate { x: 0.5, y: 0.5 }, ))], Interaction::Contains, ) .unwrap() .collect(); assert_eq!( results, vec![SJoinRow { big_index: 0, small_index: 0 }] );
Crate Features
parallel- Enabled by default.
- This adds a dependency on
rayonand provides aparallelmethod that returns aParSpatialIndexjust like theSpatialIndexthatserialreturns except that all the methods returnResult<impl ParallelIterator>instead ofResult<impl Iterator>.
Geographic
Right now, this entire crate assumes that you're dealing with euclidean geometry on a two-dimensional plane. But that's unusual: typically you've got geographic coordinates (longitude and latitude measured in decimal degrees). To use the tools in this package correctly, you should really reproject your geometries into an appropriate euclidean coordinate system. That might be require you to do a lot of extra work if the extent of your geometry sets exceeds what any reasonable projection can handle.
Alternatively, you can just pretend that geodetic coordinates are euclidean. For spatial-joins that will mostly work if all of your geometries steer well-clear of the anti-meridian (longitude=±180 degrees) and the polar regions as well.
For proximity maps, you'll need to pick an appropriate
max_distance value measured in decimal degrees which will be
used for both longitude and latitude offsets
simulataneously. That's challenging because while one degree of
latitude is always the same (about 110 km), one degree of
longitude changes from about 110 km at the equator to 0 km at the
poles. If your geometry sets have a narrow extant and are near the
equator, you might be able to find a max_distance value that
works, but that's pretty unlikely.
Performance
- You'll notice that our API specifies geometry sequences in terms
of
smallandbig. In order to construct a spatial index object, we have to build a series of R-trees, one per geometry type, using bulk loading. This process is expensive (O(n*log(n))) so you'll probably get better overall performance if you index the smaller sequence. - Because the spatial-join and proximity-map operations are
implemented as iterators, you can process very large data-sets
with low memory usage. But you do need to keep both the
smallandlargegeometry sequence in memory, in addition to rtrees for thesmallsequence. Note that in some cases, specifically whenever we're processing a heap-bound element of thelargesequence (i.e., Polygons or LineStrings), we will buffer all matching result records for each suchlargegeometry. - If you use a non-zero
max_distancevalue, then any spatial-join operations will be somewhat slower sincemax_distanceeffectively bufferssmallgeometries in the r-trees. You'll still get the correct answer, but it might take longer. The larger themax_distancevalue, the longer it will take.
License
Licensed under either of
- Apache License, Version 2.0 (LICENSE-APACHE or http://www.apache.org/licenses/LICENSE-2.0)
- MIT license (LICENSE-MIT or http://opensource.org/licenses/MIT)
at your option.
Contribution
Unless you explicitly state otherwise, any contribution intentionally submitted for inclusion in the work by you, as defined in the Apache-2.0 license, shall be dual licensed as above, without any additional terms or conditions.
Structs
| Config | |
| Par | |
| ParSpatialIndex | |
| ProxMapGeoRow | |
| ProxMapRow | |
| SJoinGeoRow | |
| SJoinRow | |
| SpatialIndex | |
| SplitGeoSeq |
Enums
| Error | |
| Interaction |