Att2CPC: Attention-Guided Lossy Attribute Compression of Point Clouds
- URL: http://arxiv.org/abs/2410.17823v1
- Date: Wed, 23 Oct 2024 12:32:21 GMT
- Title: Att2CPC: Attention-Guided Lossy Attribute Compression of Point Clouds
- Authors: Kai Liu, Kang You, Pan Gao, Manoranjan Paul,
- Abstract summary: We propose an efficient attention-based method for lossy compression of point cloud attributes leveraging on an autoencoder architecture.
Experiments show that our method achieves an average improvement of 1.15 dB and 2.13 dB in BD-PSNR of Y channel and YUV channel, respectively.
- Score: 18.244200436103156
- License:
- Abstract: With the great progress of 3D sensing and acquisition technology, the volume of point cloud data has grown dramatically, which urges the development of efficient point cloud compression methods. In this paper, we focus on the task of learned lossy point cloud attribute compression (PCAC). We propose an efficient attention-based method for lossy compression of point cloud attributes leveraging on an autoencoder architecture. Specifically, at the encoding side, we conduct multiple downsampling to best exploit the local attribute patterns, in which effective External Cross Attention (ECA) is devised to hierarchically aggregate features by intergrating attributes and geometry contexts. At the decoding side, the attributes of the point cloud are progressively reconstructed based on the multi-scale representation and the zero-padding upsampling tactic. To the best of our knowledge, this is the first approach to introduce attention mechanism to point-based lossy PCAC task. We verify the compression efficiency of our model on various sequences, including human body frames, sparse objects, and large-scale point cloud scenes. Experiments show that our method achieves an average improvement of 1.15 dB and 2.13 dB in BD-PSNR of Y channel and YUV channel, respectively, when comparing with the state-of-the-art point-based method Deep-PCAC. Codes of this paper are available at https://github.com/I2-Multimedia-Lab/Att2CPC.
Related papers
- Point Cloud Compression with Bits-back Coding [32.9521748764196]
This paper specializes in using a deep learning-based probabilistic model to estimate the Shannon's entropy of the point cloud information.
Once the entropy of the point cloud dataset is estimated, we use the learned CVAE model to compress the geometric attributes of the point clouds.
The novelty of our method with bits-back coding specializes in utilizing the learned latent variable model of the CVAE to compress the point cloud data.
arXiv Detail & Related papers (2024-10-09T06:34:48Z) - SPAC: Sampling-based Progressive Attribute Compression for Dense Point Clouds [51.313922535437726]
We propose an end-to-end compression method for dense point clouds.
The proposed method combines a frequency sampling module, an adaptive scale feature extraction module with geometry assistance, and a global hyperprior entropy model.
arXiv Detail & Related papers (2024-09-16T13:59:43Z) - P2P-Bridge: Diffusion Bridges for 3D Point Cloud Denoising [81.92854168911704]
We tackle the task of point cloud denoising through a novel framework that adapts Diffusion Schr"odinger bridges to points clouds.
Experiments on object datasets show that P2P-Bridge achieves significant improvements over existing methods.
arXiv Detail & Related papers (2024-08-29T08:00:07Z) - Point Cloud Compression with Implicit Neural Representations: A Unified Framework [54.119415852585306]
We present a pioneering point cloud compression framework capable of handling both geometry and attribute components.
Our framework utilizes two coordinate-based neural networks to implicitly represent a voxelized point cloud.
Our method exhibits high universality when contrasted with existing learning-based techniques.
arXiv Detail & Related papers (2024-05-19T09:19:40Z) - Efficient and Generic Point Model for Lossless Point Cloud Attribute Compression [28.316347464011056]
PoLoPCAC is an efficient and generic PCAC method that achieves high compression efficiency and strong generalizability simultaneously.
Our method can be instantly deployed once trained on a Synthetic 2k-ShapeNet dataset.
Experiments show that our method can enjoy continuous bit-rate reduction over the latest G-PCCv23 on various datasets.
arXiv Detail & Related papers (2024-04-10T11:40:02Z) - GQE-Net: A Graph-based Quality Enhancement Network for Point Cloud Color
Attribute [51.4803148196217]
We propose a graph-based quality enhancement network (GQE-Net) to reduce color distortion in point clouds.
GQE-Net uses geometry information as an auxiliary input and graph convolution blocks to extract local features efficiently.
Experimental results show that our method achieves state-of-the-art performance.
arXiv Detail & Related papers (2023-03-24T02:33:45Z) - Lossless Point Cloud Geometry and Attribute Compression Using a Learned Conditional Probability Model [2.670322123407995]
We present an efficient point cloud compression method that uses tensor-based deep neural networks to learn point cloud geometry and color probability.
Our method represents a point cloud with both occupancy feature and three features at different bit depths in a unified representation.
arXiv Detail & Related papers (2023-03-11T23:50:02Z) - EPCL: Frozen CLIP Transformer is An Efficient Point Cloud Encoder [60.52613206271329]
This paper introduces textbfEfficient textbfPoint textbfCloud textbfLearning (EPCL) for training high-quality point cloud models with a frozen CLIP transformer.
Our EPCL connects the 2D and 3D modalities by semantically aligning the image features and point cloud features without paired 2D-3D data.
arXiv Detail & Related papers (2022-12-08T06:27:11Z) - Density-preserving Deep Point Cloud Compression [72.0703956923403]
We propose a novel deep point cloud compression method that preserves local density information.
Our method works in an auto-encoder fashion: the encoder downsamples the points and learns point-wise features, while the decoder upsamples the points using these features.
arXiv Detail & Related papers (2022-04-27T03:42:15Z) - Attribute Artifacts Removal for Geometry-based Point Cloud Compression [43.60640890971367]
Geometry-based point cloud compression (G-PCC) can achieve remarkable compression efficiency for point clouds.
It still leads to serious attribute compression artifacts, especially under low scenarios.
We propose a Multi-Scale Graph Attention Network (MSGAT) to remove the artifacts of point cloud attributes.
arXiv Detail & Related papers (2021-12-01T15:21:06Z) - Multiscale Point Cloud Geometry Compression [29.605320327889142]
We propose a multiscale-to-end learning framework which hierarchically reconstructs the 3D Point Cloud Geometry.
The framework is developed on top of a sparse convolution based autoencoder for point cloud compression and reconstruction.
arXiv Detail & Related papers (2020-11-07T16:11:16Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.