TL;DR
DUGAE is a novel framework that enhances G-PCC compressed dynamic point clouds by exploiting spatiotemporal correlations in geometry and attributes, significantly improving quality and compression efficiency.
Contribution
It introduces a unified enhancement framework with specialized networks for geometry and attributes, explicitly modeling inter-frame spatiotemporal correlations.
Findings
Achieved an average BD-PSNR gain of 11.03 dB for geometry.
Reduced BD-bitrate by 93.95% for geometry.
Improved perceptual quality and outperformed V-PCC.
Abstract
Existing post-decoding quality enhancement methods for point clouds are designed for static data and typically process each frame independently. As a result, they cannot effectively exploit the spatiotemporal correlations present in point cloud sequences.We propose a unified geometry and attribute enhancement framework (DUGAE) for G-PCC compressed dynamic point clouds that explicitly exploits inter-frame spatiotemporal correlations in both geometry and attributes. First, a dynamic geometry enhancement network (DGE-Net) based on sparse convolution (SPConv) and feature-domain geometry motion compensation (GMC) aligns and aggregates spatiotemporal information. Then, a detail-aware k-nearest neighbors (DA-KNN) recoloring module maps the original attributes onto the enhanced geometry at the encoder side, improving mapping completeness and preserving attribute details. Finally, a dynamic…
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