Video-based Point Cloud Compression Artifact Removal
Anique Akhtar, Wen Gao, Li Li, Zhu Li, Wei Jia, Shan Liu

TL;DR
This paper introduces a novel out-of-the-loop framework for removing compression artifacts in video-based point cloud data, significantly enhancing reconstruction quality without extra bandwidth.
Contribution
It proposes a new artifact removal method using 3D deep learning, including a sampling scheme, a neural network, and an aggregation process for improved point cloud quality.
Findings
Significant improvement in point cloud reconstruction quality.
Effective artifact removal without additional bandwidth.
Utilizes 3D deep convolutional features for noise recovery.
Abstract
Photo-realistic point cloud capture and transmission are the fundamental enablers for immersive visual communication. The coding process of dynamic point clouds, especially video-based point cloud compression (V-PCC) developed by the MPEG standardization group, is now delivering state-of-the-art performance in compression efficiency. V-PCC is based on the projection of the point cloud patches to 2D planes and encoding the sequence as 2D texture and geometry patch sequences. However, the resulting quantization errors from coding can introduce compression artifacts, which can be very unpleasant for the quality of experience (QoE). In this work, we developed a novel out-of-the-loop point cloud geometry artifact removal solution that can significantly improve reconstruction quality without additional bandwidth cost. Our novel framework consists of a point cloud sampling scheme, an artifact…
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Taxonomy
TopicsAdvanced Vision and Imaging · Computer Graphics and Visualization Techniques · Optical measurement and interference techniques
