Performance analysis of Deep Learning-based Lossy Point Cloud Geometry Compression Coding Solutions
The quality evaluation of three deep learning-based coding solutions for point cloud geometry, notably ADLPCC, PCC GEO CNNv2, and PCGCv2, is presented. The MPEG G-PCC was used as an anchor. Furthermore, LUT SR, which uses multi-resolution Look-Up tables, was also considered. A set of six point cloud...
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Zusammenfassung: | The quality evaluation of three deep learning-based coding solutions for
point cloud geometry, notably ADLPCC, PCC GEO CNNv2, and PCGCv2, is presented.
The MPEG G-PCC was used as an anchor. Furthermore, LUT SR, which uses
multi-resolution Look-Up tables, was also considered. A set of six point clouds
representing landscapes and objects were used. As point cloud texture has a
great influence on the perceived quality, two different subjective studies that
differ in the texture addition model are reported and statistically compared.
In the first experiment, the dataset was first encoded with the identified
codecs. Then, the texture of the original point cloud was mapped to the decoded
point cloud using the Meshlab software, resulting in a point cloud with both
geometry and texture information. Finally, the resulting point cloud was
encoded with G-PCC using the lossless-geometry-lossy-atts mode, while in the
second experiment the texture was mapped directly onto the distorted geometry.
Moreover, both subjective evaluations were used to benchmark a set of objective
point cloud quality metrics. The two experiments were shown to be statistically
different, and the tested metrics revealed quite different behaviors for the
two sets of data. The results reveal that the preferred method of evaluation is
the encoding of texture information with G-PCC after mapping the texture of the
original point cloud to the distorted point cloud. The results suggest that
current objective metrics are not suitable to evaluate distortions created by
machine learning-based codecs. |
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DOI: | 10.48550/arxiv.2402.05192 |