DocumentCode :
1538177
Title :
Self-organization in vision: stochastic clustering for image segmentation, perceptual grouping, and image database organization
Author :
Gdalyahu, Yoram ; Weinshall, Daphna ; Werman, Michael
Author_Institution :
MobilEye Vision Technol. Ltd, Jerusalem, Israel
Volume :
23
Issue :
10
fYear :
2001
fDate :
10/1/2001 12:00:00 AM
Firstpage :
1053
Lastpage :
1074
Abstract :
We present a stochastic clustering algorithm which uses pairwise similarity of elements and show how it can be used to address various problems in computer vision, including the low-level image segmentation, mid-level perceptual grouping, and high-level image database organization. The clustering problem is viewed as a graph partitioning problem, where nodes represent data elements and the weights of the edges represent pairwise similarities. We generate samples of cuts in this graph, by using Karger\´s contraction algorithm (1996), and compute an "average" cut which provides the basis for our solution to the clustering problem. The stochastic nature of our method makes it robust against noise, including accidental edges and small spurious clusters. The complexity of our algorithm is very low: O(|E| log2 N) for N objects, |E| similarity relations, and a fixed accuracy level. In addition, and without additional computational cost, our algorithm provides a hierarchy of nested partitions. We demonstrate the superiority of our method for image segmentation on a few synthetic and real images, both B&W and color. Our other examples include the concatenation of edges in a cluttered scene (perceptual grouping) and the organization of an image database for the purpose of multiview 3D object recognition
Keywords :
computational complexity; computer vision; graph theory; image segmentation; noise; pattern clustering; self-adjusting systems; stochastic processes; visual databases; accidental edges; cluttered scene; complexity; computer vision; edge concatenation; graph partitioning problem; high-level image database organization; image database; image database organization; image segmentation; low-level image segmentation; mid-level perceptual grouping; multiview 3D object recognition; noise; perceptual grouping; self-organization; spurious clusters; stochastic clustering; stochastic method; Clustering algorithms; Computational efficiency; Computer vision; Image databases; Image segmentation; Layout; Noise robustness; Partitioning algorithms; Stochastic processes; Stochastic resonance;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/34.954598
Filename :
954598
Link To Document :
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