When clusters with different densities and noise lie in a spatial point set, the major obstacle to classifying these data is the determination of the thresholds for classification, which may form a series of bins for allocating each point to different clusters. Much of the previous work has adopted a model-based approach, but is either incapable of estimating the thresholds in an automatic way, or limited to only two point processes, i.e. noise and clusters with the same density. In this paper, we present a new density-based cluster method (DECODE), in which a spatial data set is presumed to consist of different point processes and clusters with different densities belong to different point processes. DECODE is based upon a reversible jump ...
The government and earthquake associations have recorded the seismic data in spatial-temporal usuall...
Density-based clustering algorithms are able to identify clusters of arbitrary shapes and sizes in a...
A clustering algorithm which is based on density and adaptive density-reachable is developed and pre...
When clusters with different densities and noise lie in a spatial point set, the major obstacle to c...
When two spatial point processes are overlaid, the one with the higher rate is shown as clustered po...
To automatically identify arbitrarily-shaped clusters in point data, a theory of point process decom...
With seismic catalogues becoming progressively larger, extracting information becomes challenging an...
In a spatial point set, clustering patterns (features) are difficult to locate due to the presence o...
The task of discriminating between heterogeneity and complete spatial randomness (CSR) for a given p...
A fundamental element of exploratory spatial data analysis is the discovery of clusters in a spatial...
PolyU Library Call No.: [THS] LG51 .H577P LSGI 2015 Liuxv, 194 pages :illustrations (some color) ;30...
Clustered events are usually deemed as feature when several spatial point processes are overlaid in ...
In shale gas hydraulic fracture monitoring or rock acoustic emission experiments, fracture plane ide...
We proposed an approach that has the ability to detect spatial clusters with skewed or irregular dis...
Density-based clustering, such as Density Peak Clustering (DPC) and DBSCAN, can find clusters with a...
The government and earthquake associations have recorded the seismic data in spatial-temporal usuall...
Density-based clustering algorithms are able to identify clusters of arbitrary shapes and sizes in a...
A clustering algorithm which is based on density and adaptive density-reachable is developed and pre...
When clusters with different densities and noise lie in a spatial point set, the major obstacle to c...
When two spatial point processes are overlaid, the one with the higher rate is shown as clustered po...
To automatically identify arbitrarily-shaped clusters in point data, a theory of point process decom...
With seismic catalogues becoming progressively larger, extracting information becomes challenging an...
In a spatial point set, clustering patterns (features) are difficult to locate due to the presence o...
The task of discriminating between heterogeneity and complete spatial randomness (CSR) for a given p...
A fundamental element of exploratory spatial data analysis is the discovery of clusters in a spatial...
PolyU Library Call No.: [THS] LG51 .H577P LSGI 2015 Liuxv, 194 pages :illustrations (some color) ;30...
Clustered events are usually deemed as feature when several spatial point processes are overlaid in ...
In shale gas hydraulic fracture monitoring or rock acoustic emission experiments, fracture plane ide...
We proposed an approach that has the ability to detect spatial clusters with skewed or irregular dis...
Density-based clustering, such as Density Peak Clustering (DPC) and DBSCAN, can find clusters with a...
The government and earthquake associations have recorded the seismic data in spatial-temporal usuall...
Density-based clustering algorithms are able to identify clusters of arbitrary shapes and sizes in a...
A clustering algorithm which is based on density and adaptive density-reachable is developed and pre...