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#52 in Geospatial

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MIT/Apache

43KB
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sif-rtree

crates.io docs.rs github.com

A simple library implementing an immutable, flat representation of an R-tree supporting several kinds of spatial queries, nearest neighbour search and backing storage based on memory maps.

License

Licensed under

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.


lib.rs:

A simple library implementing an immutable, flat representation of an R-tree

The library uses the same overlap-minimizing top-down bulk loading algorithm as the rstar crate. Its supports several kinds of spatial queries, nearest neighbour search and has a simple implementation as the objects in the index are fixed after construction. This also enables a flat and thereby cache-friendly memory layout which can be backed by memory maps.

The library provides optional integration with [serde] for (de-)serialization of the trees.

Example

use std::ops::ControlFlow;

use sif_rtree::{DEF_NODE_LEN, Distance, RTree, Object};

struct Something(usize, [f64; 2]);

impl Object for Something {
    type Point = [f64; 2];

    fn aabb(&self) -> (Self::Point, Self::Point) {
        (self.1, self.1)
    }
}

impl Distance<[f64; 2]> for Something {
    fn distance_2(&self, point: &[f64; 2]) -> f64 {
        self.1.distance_2(point)
    }
}

let index = RTree::new(
    DEF_NODE_LEN,
    vec![
        Something(0, [-0.4, -3.3]),
        Something(1, [-4.5, -1.8]),
        Something(2, [0.7, 2.0]),
        Something(3, [1.7, 1.5]),
        Something(4, [-1.3, 2.3]),
        Something(5, [2.2, 1.0]),
        Something(6, [-3.7, 3.8]),
        Something(7, [-3.2, -0.1]),
        Something(8, [1.4, 2.7]),
        Something(9, [3.1, -0.0]),
        Something(10, [4.3, 0.8]),
        Something(11, [3.9, -3.3]),
        Something(12, [0.4, -3.2]),
    ],
);

let mut close_by = Vec::new();

index.look_up_within_distance_of_point(&[0., 0.], 3., |thing| {
    close_by.push(thing.0);

    ControlFlow::Continue(())
});

assert_eq!(close_by, [3, 5, 4, 2]);

The RTree data structure is generic over its backing storage as long as it can be converted into a slice via the AsRef trait. This can for instance be used to memory map R-trees from persistent storage.

use std::fs::File;
use std::mem::size_of;
use std::slice::from_raw_parts;

use memmap2::Mmap;

use sif_rtree::{Node, Object, Point, RTree};

#[derive(Clone, Copy)]
struct Triangle([[f64; 3]; 3]);

impl Object for Triangle {
    type Point = [f64; 3];

    fn aabb(&self) -> (Self::Point, Self::Point) {
        let min = self.0[0].min(&self.0[1]).min(&self.0[2]);
        let max = self.0[0].max(&self.0[1]).max(&self.0[2]);
        (min, max)
    }
}

let file = File::open("index.bin")?;
let map = unsafe { Mmap::map(&file)? };

struct TriangleSoup(Mmap);

impl AsRef<[Node<Triangle>]> for TriangleSoup {
    fn as_ref(&self) -> &[Node<Triangle>] {
        let ptr = self.0.as_ptr().cast();
        let len = self.0.len() / size_of::<Node<Triangle>>();

        unsafe { from_raw_parts(ptr, len) }
    }
}

let index = RTree::new_unchecked(TriangleSoup(map));

Dependencies

~93–305KB