SOTAVerified

Point Cloud Quality Assessment

Background

A large and dense collection of points in three-dimensional space, collected by sensors such as LiDAR, is known as a point cloud. Points in the point cloud consist of geometric properties, such as three-dimensional spatial coordinates (x, y, z), and other attributes like color, reflectance, opacity, etc., represented by feature vectors. Since point clouds can directly represent the 3D world, they are widely employed in various fields, such as photogrammetry, power monitoring, architectural surveying, digital manufacturing, autonomous driving, gaming, cultural heritage reservation, and more.

Significance

Interactive point clouds typically contain millions of colored points and may possess complex attributes. To address the substantial transmission bandwidth and storage space required by point clouds, esearchers have developed various point cloud compression (PCC) techniques. However, point cloud compression may introduce significant visual distortions. In addition, deformations and distortions frequently occur during the acquisition, processing, transmission, rendering, and interaction of point clouds, all of which degrade the visual quality of the point cloud, ultimately impacting the application’s user experience. Therefore, effective methods for quantifying the quality of compressed point clouds are needed. More generally, point cloud quality assessment (PCQA) is crucial for optimizing and evaluating point cloud processing algorithms, such as encoding, denoising, and super-resolution.

Papers

Showing 2130 of 40 papers

TitleStatusHype
Simple Baselines for Projection-based Full-reference and No-reference Point Cloud Quality Assessment0
Once-Training-All-Fine: No-Reference Point Cloud Quality Assessment via Domain-relevance Degradation Description0
GMS-3DQA: Projection-based Grid Mini-patch Sampling for 3D Model Quality AssessmentCode1
No-Reference Point Cloud Quality Assessment via Weighted Patch Quality PredictionCode0
Reduced Reference Quality Assessment for Point Cloud Compression0
PCQA-GRAPHPOINT: Efficients Deep-Based Graph Metric For Point Cloud Quality Assessment0
GPA-Net:No-Reference Point Cloud Quality Assessment with Multi-task Graph Convolutional Network0
TCDM: Transformational Complexity Based Distortion Metric for Perceptual Point Cloud Quality AssessmentCode0
Point Cloud Quality Assessment using 3D Saliency Maps0
MM-PCQA: Multi-Modal Learning for No-reference Point Cloud Quality AssessmentCode1
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1COPP-NetPLCC0.93Unverified
2MM-PCQAPLCC0.83Unverified
3NR-3DQAPLCC0.65Unverified
4IT-PCQAPLCC0.55Unverified
5ResSCNNPLCC0.43Unverified
#ModelMetricClaimedVerifiedStatus
1-Pearson Correlation Coefficient 95.6Unverified
#ModelMetricClaimedVerifiedStatus
1MM-PCQAKROCC0.78Unverified