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ICPR
2010
IEEE

Accurate Dense Stereo by Constraining Local Consistency on Superpixels

13 years 7 months ago
Accurate Dense Stereo by Constraining Local Consistency on Superpixels
Segmentation is a low-level vision cue often deployed by stereo algorithms to assume that disparity within superpixels varies smoothly. In this paper, we show that constraining, on a superpixel basis, the cues provided by a recently proposed technique, which explicitly models local consistency among neighboring points, yields accurate and dense disparity fields. Our proposal, starting from the initial disparity hypotheses of a fast dense stereo algorithm based on scanline optimization, demonstrates its effectiveness by enabling us to obtain results comparable to top-ranked algorithms based on iterative disparity optimization methods.
Stefano Mattoccia
Added 02 Sep 2010
Updated 02 Sep 2010
Type Conference
Year 2010
Where ICPR
Authors Stefano Mattoccia
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