Stereo Matching Based Estimation of Depth Map from Stereo Image Pair
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Abstract
Stereo vision is a technique of depth perception, in which the information about
the depth is inferred from the two (or more) images captured from different perspectives
of a scene. These images is known as stereo image pair. Practical applications
where stereo vision technology plays a role may include autonomous
vehicle guidance, aerial photogrammetry, robotics vision, object tracking and industrial
automation. Many automated vision systems could benefit substantially
from depth maps.
A depth map is a grayscale image that contains depth information for each
pixel in an image. Traditionally depth maps were extracted using stereo camera
approach. Depth estimation from stereo involves finding disparities along
the same scanline, also called as epipolar lines. Such a search process typically
requires a prior adjustment of the images known as rectification step to ensure
that epipolar lines are well aligned. Still, the approaches for estimation of depth
map suffer from either limited reliability and robustness when tested on stereo
image pair or large time of computation. A novel approach for depth estimation
that integrates the image filtering into a stereo matching framework is introduced.
Experiment helps verifying the sustenance of high quality in depth maps, while
reducing the average percent of bad pixels to 3.58%.
Description
Master of Technology-Computer Science Applications
