One paper accepted by IEEE TMM!

Written by  |  16/10/2020 - 13/54

Congrats to Qi Yang!


Title: Predicting the Perceptual Quality of Point Cloud: A 3D-to-2D Projection-Based Exploration


Abstract: Point cloud is emerged as a promising media format to represent realistic 3D objects or scenes in applications, such as virtual reality, teleportation, etc. How to accurately quantify the subjective point cloud quality for application-driven optimization, however, is still a challenging and open problem. In this paper, we attempt to tackle  this  problem in a  systematic  means.  First,we produce a fairly large point cloud dataset where ten popular point clouds are augmented with seven types of impairments (e.g., compression, photometry/color noise, geometry noise, scaling) at six  different  distortion  levels,  and organize  a formal  subjective assessment with tens of subjects to collect mean opinion scores (MOS) for all 420 processed point cloud  samples (PPCS). We then try to develop  an objective  metric that  can  accurately estimate  the  subjective  quality.  Towards  this  goal,  we  choose to  project  the 3D point cloud  onto six  perpendicular  image planes  of  a  cube  for  the  color  texture  image  and  corresponding depth  image,  and  aggregate  image-based  global  (e.g., Jensen-Shannon  (JS)  divergence)  and  local  features  (e.g.,  edge, depth, pixel-wise similarity, complexity) among all projected planes for a final objective index. Model parameters are fixed constants after performing the regression using a small and independent dataset previously published. The proposed metric has demonstrated the state-of-the-art  performance  for  predicting  the  subjective  point cloud  quality  compared  with  multiple  full-reference  and  no-reference  models,  e.g.,  the  weighted  peak  signal-to-noise  ratio(PSNR),  structural  similarity  (SSIM),  feature  similarity  (FSIM) and natural image quality evaluator (NIQE). The dataset is made publicly  accessible  at  http://smt.sjtu.edu.cn  or  http://vision.nju.edu.cn  for  all  interested  audiences