DocumentCode
3790520
Title
Adaptive perceptual color-texture image segmentation
Author
Junqing Chen;T.N. Pappas;A. Mojsilovic;B.E. Rogowitz
Author_Institution
Unilever Res., Trumbull, CT, USA
Volume
14
Issue
10
fYear
2005
Firstpage
1524
Lastpage
1536
Abstract
We propose a new approach for image segmentation that is based on low-level features for color and texture. It is aimed at segmentation of natural scenes, in which the color and texture of each segment does not typically exhibit uniform statistical characteristics. The proposed approach combines knowledge of human perception with an understanding of signal characteristics in order to segment natural scenes into perceptually/semantically uniform regions. The proposed approach is based on two types of spatially adaptive low-level features. The first describes the local color composition in terms of spatially adaptive dominant colors, and the second describes the spatial characteristics of the grayscale component of the texture. Together, they provide a simple and effective characterization of texture that the proposed algorithm uses to obtain robust and, at the same time, accurate and precise segmentations. The resulting segmentations convey semantic information that can be used for content-based retrieval. The performance of the proposed algorithms is demonstrated in the domain of photographic images, including low-resolution, degraded, and compressed images.
Keywords
"Image segmentation","Layout","Humans","Clustering algorithms","Content based retrieval","Image retrieval","Data mining","Image texture analysis","Gray-scale","Robustness"
Journal_Title
IEEE Transactions on Image Processing
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/TIP.2005.852204
Filename
1510687
Link To Document