Title
A Sban Stereovision Algorithm Using Hue As Pixel Similarity Criterion
Abstract
This paper presents a similarity-based adaptive neighborhood (SBAN) dense stereovision algorithm which uses color for comparing pixels. In SBAN methods, the neighbor pixels which are not similar to the central one are excluded of the window when computing the correlation index, which corresponds to adapting the equivalent size and shape of the correlation neighborhood. We present a specific type of SBAN algorithms, in which the similarity criterion is based on a pre-classification of pixels, and show that they can be efficiently implemented using recursive computations. As an example, we show that color, more precisely hue, is an efficient similarity criterion for SBAN methods and present the result on a classical stereo pair.
Year
DOI
Venue
2004
10.1007/1-4020-4179-9_79
COMPUTER VISION AND GRAPHICS (ICCVG 2004)
Keywords
Field
DocType
SBAN stereovision, recursive implementation
Pattern recognition,Similarity criterion,Kleene's recursion theorem,Hue,Algorithm,Correlation,Pixel,Artificial intelligence,Recursive computation,Mathematics,Recursion
Conference
Volume
Citations 
PageRank 
32
1
0.39
References 
Authors
4
3
Name
Order
Citations
PageRank
Madaín Pérez-Patricio110.39
Olivier Colot212915.55
Francois Cabestaing382.39