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Full reference point cloud quality assessment using support vector regression

About

Point clouds are a general format for representing realistic 3D objects in diverse 3D applications. Since point clouds have large data sizes, developing efficient point cloud compression methods is crucial. However, excessive compression leads to various distortions, which deteriorates the point cloud quality perceived by end users. Thus, establishing reliable point cloud quality assessment (PCQA) methods is essential as a benchmark to develop efficient compression methods. This paper presents an accurate full-reference point cloud quality assessment (FR-PCQA) method called full-reference quality assessment using support vector regression (FRSVR) for various types of degradations such as compression distortion, Gaussian noise, and down-sampling. The proposed method demonstrates accurate PCQA by integrating five FR-based metrics covering various types of errors (e.g., considering geometric distortion, color distortion, and point count) using support vector regression (SVR). Moreover, the proposed method achieves a superior trade-off between accuracy and calculation speed because it includes only the calculation of these five simple metrics and SVR, which can perform fast prediction. Experimental results with three types of open datasets show that the proposed method is more accurate than conventional FR-PCQA methods. In addition, the proposed method is faster than state-of-the-art methods that utilize complicated features such as curvature and multi-scale features. Thus, the proposed method provides excellent performance in terms of the accuracy of PCQA and processing speed. Our method is available from https://github.com/STAC-USC/FRSVR-PCQA.

Ryosuke Watanabe, Shashank N. Sridhara, Haoran Hong, Eduardo Pavez, Keisuke Nonaka, Tatsuya Kobayashi, Antonio Ortega• 2024

Related benchmarks

TaskDatasetResultRank
Point Cloud Quality AssessmentWPC
PLCC0.243
48
Point Cloud Quality AssessmentSJTU-PCQA
PLCC0.549
38
Point Cloud Quality AssessmentPCQA Oc (Octree-based Compression Distortion)
PLCC0.733
23
Point Cloud Quality AssessmentPCQA Ds (Downsampling Distortion)
PLCC0.809
12
Point Cloud Quality AssessmentM-PCCD
PLCC0.754
12
Point Cloud Quality AssessmentICIP
PLCC0.772
12
Point Cloud Quality AssessmentPCQA Tc (Trisoup-based Compression Distortion)
PLCC0.408
12
Point Cloud Quality AssessmentPCQA Vc (Video-based Compression Distortion)
PLCC0.417
12
Point Cloud Quality AssessmentALL
PLCC0.438
12
Point Cloud Quality AssessmentPCQA Ns (Noise Distortion)
PLCC0.522
12
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