Lossless Compression of Point Cloud Sequences Using Sequence Optimized CNN Models
Emre Can Kaya, Ioan Tabus

TL;DR
This paper introduces a novel lossless point cloud sequence compression method using sequence-optimized lightweight CNNs that operate on octree representations, achieving competitive bitrates and encoding times.
Contribution
It presents a new CNN-based encoding scheme optimized on sequence frames, with integrated training and transmission of CNN parameters, enhancing compression efficiency.
Findings
Achieves competitive bitrates compared to recent schemes.
Operates efficiently with parallelized CNN probability estimation.
Maintains reasonable encoding and decoding times.
Abstract
We propose a new paradigm for encoding the geometry of point cloud sequences, where the convolutional neural network (CNN) which estimates the encoding distributions is optimized on several frames of the sequence to be compressed. We adopt lightweight CNN structures, we perform training as part of the encoding process, and the CNN parameters are transmitted as part of the bitstream. The newly proposed encoding scheme operates on the octree representation for each point cloud, encoding consecutively each octree resolution layer. At every octree resolution layer, the voxel grid is traversed section-by-section (each section being perpendicular to a selected coordinate axis) and in each section the occupancies of groups of two-by-two voxels are encoded at once, in a single arithmetic coding operation. A context for the conditional encoding distribution is defined for each two-by-two group…
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Taxonomy
Topics3D Shape Modeling and Analysis · Optical measurement and interference techniques · 3D Surveying and Cultural Heritage
