Title of article :
Combined Morphological-Spectral Unsupervised Image Segmentation
Author/Authors :
R. J. O’Callaghan and D. R. Bull، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
The goal of segmentation is to partition an image into
disjoint regions, in a manner consistent with human perception
of the content. For unsupervised segmentation of general images,
however, there is the competing requirement not to make prior assumptions
about the scene. Here, a two-stage method for general
image segmentation is proposed, which is capable of processing
both textured and nontextured objects in a meaningful fashion.
The first stage extracts texture features from the subbands of the
dual-tree complex wavelet transform. Oriented median filtering is
employed, to circumvent the problem of texture feature response at
step edges in the image. From the processed feature images, a perceptual
gradient function is synthesised, whose watershed transform
provides an initial segmentation. The second stage of the algorithm
groups together these primitive regions into meaningful
objects. To achieve this, a novel spectral clustering technique is
proposed, which introduces the weighted mean cut cost function for
graph partitioning. The ability of the proposed algorithm to generalize
across a variety of image types is demonstrated.
Keywords :
Texture , watershed , segmentation , weighted mean cut. , graph partitioning , Spectral clustering
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING