Title :
Quantized Census for Stereoscopic Image Matching
Author :
Basaru, Rilwan Remilekun ; Child, Chris ; Alonso, Eduardo ; Slabaugh, Greg
Author_Institution :
Dept. of Comput. Sci., City Univ. London, London, UK
Abstract :
Current depth capturing devices show serious drawbacks in certain applications, for example ego-centric depth recovery: they are cumbersome, have a high power requirement, and do not portray high resolution at near distance. Stereo-matching techniques are a suitable alternative, but whilst the idea behind these techniques is simple it is well known that recovery of an accurate disparity map by stereo-matching requires overcoming three main problems: occluded regions causing absence of corresponding pixels, existence of noise in the image capturing sensor and inconsistent color and brightness in the captured images. We propose a modified version of the Census-Hamming cost function which allows more robust matching with an emphasis on improving performance under radiometric variations of the input images.
Keywords :
image capture; image matching; stereo image processing; Census-Hamming cost function; depth capturing devices; disparity map recovery; egocentric depth recovery; image capturing sensor; input image radiometric variations; quantized census; stereoscopic image matching; Cost function; Noise; Nonlinear distortion; Quantization (signal); Radiometry; Robustness; Census; Matching; Quantized; Stereo;
Conference_Titel :
3D Vision (3DV), 2014 2nd International Conference on
DOI :
10.1109/3DV.2014.83