IEEE Access (Jan 2016)

A Depth Map Post-Processing Approach Based on Adaptive Random Walk With Restart

  • Hossein Javidnia,
  • Peter Corcoran

DOI
https://doi.org/10.1109/ACCESS.2016.2603220
Journal volume & issue
Vol. 4
pp. 5509 – 5519

Abstract

Read online

Accurate depth estimation is still an important challenge after a decade, particularly from stereo images. The accuracy comes from a good depth level and preserved structure. For this purpose, a depth post-processing framework is proposed in this paper. The framework starts with the “Adaptive Random Walk with Restart (2015)” algorithm. To refine the depth map generated by this method, we introduced a form of median solver/filter based on the concept of the mutual structure, which refers to the structural information in both images. This filter is further enhanced by a joint filter. Next, a transformation in image domain is introduced to remove the artifacts that cause distortion in the image. The proposed post-processing method is then compared with the top eight algorithms in the Middlebury benchmark. To explore how well this method is able to compete with more widely known techniques, a comparison is performed with Google's new depth map estimation method. The experimental results demonstrate the accuracy and efficiency of the proposed post-processing method.

Keywords