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📄 Abstract
Abstract: Very few studies have addressed quality enhancement for compressed dynamic
point clouds. In particular, the effective exploitation of spatial-temporal
correlations between point cloud frames remains largely unexplored. Addressing
this gap, we propose a spatial-temporal attribute quality enhancement (STQE)
network that exploits both spatial and temporal correlations to improve the
visual quality of G-PCC compressed dynamic point clouds. Our contributions
include a recoloring-based motion compensation module that remaps reference
attribute information to the current frame geometry to achieve precise
inter-frame geometric alignment, a channel-aware temporal attention module that
dynamically highlights relevant regions across bidirectional reference frames,
a Gaussian-guided neighborhood feature aggregation module that efficiently
captures spatial dependencies between geometry and color attributes, and a
joint loss function based on the Pearson correlation coefficient, designed to
alleviate over-smoothing effects typical of point-wise mean squared error
optimization. When applied to the latest G-PCC test model, STQE achieved
improvements of 0.855 dB, 0.682 dB, and 0.828 dB in delta PSNR, with
Bj{\o}ntegaard Delta rate (BD-rate) reductions of -25.2%, -31.6%, and -32.5%
for the Luma, Cb, and Cr components, respectively.