Title :
Graph cut and image segmentation using mean cut by means of an agglomerative algorithm
Author :
Elaine Ayumi Chiba;Marco Antonio Garcia de Carvalho;André Luís da Costa
Author_Institution :
Computing Visual Lab, School of Technology - FT, University of Campinas - UNICAMP, Limeira - SP, Brazil
Abstract :
Graph partitioning, or graph cut, has been studied by several authors as a tool for image segmentation. It refers to partitioning a graph into several subgraphs such that each of them represents a meaningful object of interest in the image. In this work we propose a hierarchical agglomerative clustering algorithm driven by the cut and mean cut criteria. Some preliminary experiments were performed using the benchmark of Berkeley BSDS500 with promising results.
Keywords :
"Image segmentation","Clustering algorithms","Measurement","Partitioning algorithms","Image edge detection","Benchmark testing","Couplings"
Conference_Titel :
Computer Vision Theory and Applications (VISAPP), 2014 International Conference on