Location and Density-Based Hierarchical Clustering
P. Bajcsy and Narendra Ahuja
Abstract:
This paper presents a new approach to hierarchical clustering of point
patterns. Two algorithms for hierarchical location- and density-based
clustering are developed. Each method groups points such that maximum
intracluster similarity and intercluster dissimilarity are achieved for
point locations or point separations. Performance of the clustering
methods is compared with four other methods. The approach is applied to a
two-step texture analysis, where points represent centroid and average
color of the regions in image segmentation.
[PDF
Full-Text (100 KB)]
|