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Mining biomedical images with density-based clustering
2005
International Conference on Information Technology: Coding and Computing (ITCC'05) - Volume II
Density-based clustering algorithms have recently gained popularity in the data mining field due to their ability to discover arbitrary shaped clusters while preserving spatial proximity of data points. In this work we adapt a density-based clustering algorithm, DBSCAN, to a new problem domain: Identification of homogenous color regions in biomedical images. Examples of specific problems of this nature include landscape segmentation of satellite imagery, object detection and, in our case,
doi:10.1109/itcc.2005.196
dblp:conf/itcc/CelebiAB05
fatcat:7ushramygvbjfmqaru3rp5youu