JSPM

@spatial/clusters-dbscan

2.0.0
  • ESM via JSPM
  • ES Module Entrypoint
  • Export Map
  • Keywords
  • License
  • Repository URL
  • TypeScript Types
  • README
  • Created
  • Published
  • Downloads 1
  • Score
    100M100P100Q34408F
  • License MIT

turf clusters-dbscan module

Package Exports

  • @spatial/clusters-dbscan

This package does not declare an exports field, so the exports above have been automatically detected and optimized by JSPM instead. If any package subpath is missing, it is recommended to post an issue to the original package (@spatial/clusters-dbscan) to support the "exports" field. If that is not possible, create a JSPM override to customize the exports field for this package.

Readme

@spatial/clusters-dbscan

clustersDbscan

Takes a set of points and partition them into clusters according to https://en.wikipedia.org/wiki/DBSCAN data clustering algorithm.

Parameters

  • points FeatureCollection<Point> to be clustered
  • maxDistance number Maximum Distance between any point of the cluster to generate the clusters (kilometers only)
  • options Object Optional parameters (optional, default {})
    • options.units string in which maxDistance is expressed, can be degrees, radians, miles, or kilometers (optional, default kilometers)
    • options.minPoints number Minimum number of points to generate a single cluster, points which do not meet this requirement will be classified as an 'edge' or 'noise'. (optional, default 3)

Examples

// create random points with random z-values in their properties
var points = turf.randomPoint(100, {bbox: [0, 30, 20, 50]});
var maxDistance = 100;
var clustered = turf.clustersDbscan(points, maxDistance);

//addToMap
var addToMap = [clustered];

Returns FeatureCollection<Point> Clustered Points with an additional two properties associated to each Feature:- {number} cluster - the associated clusterId

  • {string} dbscan - type of point it has been classified as ('core'|'edge'|'noise')

This module is part of the Turfjs project, an open source module collection dedicated to geographic algorithms. It is maintained in the Turfjs/turf repository, where you can create PRs and issues.

Installation

Install this module individually:

$ npm install @spatial/clusters-dbscan

Or install the Turf module that includes it as a function:

$ npm install @turf/turf