New Stereo Vision Algorithm Composition Using Weighted Adaptive Histogram Equalization and Gamma Correction

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Abstract

This work presents the composition of a new algorithm for a stereo vision system to acquire accurate depth measurement from stereo correspondence. Stereo correspondence produced by matching is commonly affected by image noise such as illumination variation, blurry boundaries, and radiometric differences. The proposed algorithm introduces a pre-processing step based on the combination of Contrast Limited Adaptive Histogram Equalization (CLAHE) and Adaptive Gamma Correction Weighted Distribution (AGCWD) with a guided filter (GF). The cost value of the pre-processing step is determined in the matching cost step using the census transform (CT), which is followed by aggregation using the fixed-window and GF technique. A winner-takes-all (WTA) approach is employed to select the minimum disparity map value and final refinement using left-right consistency checking (LR) along with a weighted median filter (WMF) to remove outliers. The algorithm improved the accuracy 31.65% for all pixel errors and 23.35% for pixel errors in nonoccluded regions compared to several established algorithms on a Middlebury dataset.

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APA

Fauzan, A., Affendi, R., Nurulfajar, Saad, M., Nadzrie, & Faisal, T. M. (2021). New Stereo Vision Algorithm Composition Using Weighted Adaptive Histogram Equalization and Gamma Correction. Journal of ICT Research and Applications, 15(3), 239–250. https://doi.org/10.5614/ITBJ.ICT.RES.APPL.2021.15.3.3

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