T
- type of the points to clusterpublic class DBSCANClusterer<T extends Clusterable<T>> extends Object
The DBSCAN algorithm forms clusters based on the idea of density connectivity, i.e. a point p is density connected to another point q, if there exists a chain of points pi, with i = 1 .. n and p1 = p and pn = q, such that each pair <pi, pi+1> is directly density-reachable. A point q is directly density-reachable from point p if it is in the ε-neighborhood of this point.
Any point that is not density-reachable from a formed cluster is treated as noise, and will thus not be present in the result.
The algorithm requires two parameters:
Note: as DBSCAN is not a centroid-based clustering algorithm, the resulting Cluster
objects will have
no defined center, i.e. Cluster.getCenter()
will return null
.
Constructor and Description |
---|
DBSCANClusterer(double epsIn,
int minPtsIn)
Creates a new instance of a DBSCANClusterer.
|
Modifier and Type | Method and Description |
---|---|
List<Cluster<T>> |
cluster(Collection<T> points)
Performs DBSCAN cluster analysis.
|
double |
getEps()
Returns the maximum radius of the neighborhood to be considered.
|
int |
getMinPts()
Returns the minimum number of points needed for a cluster.
|
public DBSCANClusterer(double epsIn, int minPtsIn)
epsIn
- maximum radius of the neighborhood to be consideredminPtsIn
- minimum number of points needed for a clusterNotPositiveException
- if eps < 0.0
or minPts < 0
public double getEps()
public int getMinPts()
public List<Cluster<T>> cluster(Collection<T> points)
Note: as DBSCAN is not a centroid-based clustering algorithm, the resulting Cluster
objects will
have no defined center, i.e. Cluster.getCenter()
will return null
.
points
- the points to clusterNullArgumentException
- if the data points are nullCopyright © 2019 CNES. All rights reserved.