In a spatial point set, clustering patterns (features) are difficult to locate due to the presence of noise. Previous methods, either using grid-based method or distance-based method to separate feature from noise, suffer from the parameter choice problem, which may produce different point patterns in terms of shape and area. This paper presents the Collective Nearest Neighbor method (CLNN) to identify features. CLNN assumes that in spatial data clustered points and noise can be viewed as two homogenous point processes. The one with the higher intensity is considered as a feature and the one with the lower intensity is treated as noise. As a result, they can be separated according to the difference in intensity between them. With CLNN, poin...
Clustering analysis is one of the most important techniques in point cloud processing, such as regis...
Abstract – In the analysis of spatial point patterns, complete spatial randomness (CSR) hypothesis, ...
PolyU Library Call No.: [THS] LG51 .H577P LSGI 2015 Liuxv, 194 pages :illustrations (some color) ;30...
In a spatial point set, clustering patterns (features) are difficult to locate due to the presence o...
When two spatial point processes are overlaid, the one with the higher rate is shown as clustered po...
We consider the problem of feature detection, in the presence of clutter in spatial point processes....
Clustered events are usually deemed as feature when several spatial point processes are overlaid in ...
When clusters with different densities and noise lie in a spatial point set, the major obstacle to c...
When clusters with different densities and noise lie in a spatial point set, the major obstacle to c...
We consider the problem of detecting features of general shape in spatial point processes in the pre...
We consider the problem of detection of features in the presence of clutter for spatio-temporal poin...
A novel clustering algorithm CSHARP is presented for the purpose of finding clusters of arbitrary sh...
To automatically identify arbitrarily-shaped clusters in point data, a theory of point process decom...
Due to the constant technological advances and massive use of electronic devices, the amount of data...
Spatial point pattern analysis usually concerns identifying features in an observation window where ...
Clustering analysis is one of the most important techniques in point cloud processing, such as regis...
Abstract – In the analysis of spatial point patterns, complete spatial randomness (CSR) hypothesis, ...
PolyU Library Call No.: [THS] LG51 .H577P LSGI 2015 Liuxv, 194 pages :illustrations (some color) ;30...
In a spatial point set, clustering patterns (features) are difficult to locate due to the presence o...
When two spatial point processes are overlaid, the one with the higher rate is shown as clustered po...
We consider the problem of feature detection, in the presence of clutter in spatial point processes....
Clustered events are usually deemed as feature when several spatial point processes are overlaid in ...
When clusters with different densities and noise lie in a spatial point set, the major obstacle to c...
When clusters with different densities and noise lie in a spatial point set, the major obstacle to c...
We consider the problem of detecting features of general shape in spatial point processes in the pre...
We consider the problem of detection of features in the presence of clutter for spatio-temporal poin...
A novel clustering algorithm CSHARP is presented for the purpose of finding clusters of arbitrary sh...
To automatically identify arbitrarily-shaped clusters in point data, a theory of point process decom...
Due to the constant technological advances and massive use of electronic devices, the amount of data...
Spatial point pattern analysis usually concerns identifying features in an observation window where ...
Clustering analysis is one of the most important techniques in point cloud processing, such as regis...
Abstract – In the analysis of spatial point patterns, complete spatial randomness (CSR) hypothesis, ...
PolyU Library Call No.: [THS] LG51 .H577P LSGI 2015 Liuxv, 194 pages :illustrations (some color) ;30...