(Accepted in IEEE Access 2023)
Abstract
Proposed Approach
We propose a two-stream architecture for the up-sampling of colored point clouds. The first stream up-samples the points using a cross-attention-based Multi-scale Point-Cloud Feature (MPF) computed for each point in the input sparse-point cloud. The second stream consists of the color prediction module, which predicts and refines the colors for each point in the up-sampled point cloud. We try to preserve the color variation by introducing a color variance conformity loss to avoid low-resolution color generation. Features computed at different stages of the point upsampling stream are used to compute color features by color prediction scheme.
Results
Quantitative comparison of the proposed CloudUp with SOTA methods on SketchFab and LS-PCQA datasets.
Qualitative results for CloudUp points upsampling on SketchFab dataset. CloudUp upsamples the points precisely leading to accurate point clouds with preserved structure.
Researcher ETRI, Daejeon, South Korea
Email:
LinkedIn:
Research Assistant Vision Processing Lab, ITU, Lahore, Pakistan
Research Assistant Intelligent Machines Lab, ITU, Lahore, Pakistan
Ph.D. Fellow at Intelligent Machines Lab, ITU, Lahore Pakistan
Email: javed.iqbal@itu.edu.pk
LinkedIn: Javed Iqbal
Research Assistant Intelligent Machines Lab, Lahore Pakistan
Email: bscs18054@itu.edu.pk
LinkedIn: Abdul Basit
Assistant Professor, Department of Engineering,, ITU, Lahore, Pakistan
Associate Professor Tenured, Department of AI, ITU, Pakistan
Email: mohsen.ali@itu.edu.pk
LinkedIn: Mohsen Ali
BibTex
@article{cho2023cloudup,
title={CloudUP—Upsampling Vibrant Color Point Clouds Using Multi-Scale Spatial Attention},
author={Cho, Yongju and Tariq, Rimsha and Hassan, Usama and Iqbal, Javed and Basit, Abdul and Choo, Hyon-Gon and Hafiz, Rehan and Ali, Mohsen},
journal={IEEE Access},
volume={11},
pages={128569–128579},
year={2023},
publisher={IEEE}
}