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TCDM: Transformational Complexity Based Distortion Metric for Perceptual Point Cloud Quality Assessment

About

The goal of objective point cloud quality assessment (PCQA) research is to develop quantitative metrics that measure point cloud quality in a perceptually consistent manner. Merging the research of cognitive science and intuition of the human visual system (HVS), in this paper, we evaluate the point cloud quality by measuring the complexity of transforming the distorted point cloud back to its reference, which in practice can be approximated by the code length of one point cloud when the other is given. For this purpose, we first make space segmentation for the reference and distorted point clouds based on a 3D Voronoi diagram to obtain a series of local patch pairs. Next, inspired by the predictive coding theory, we utilize a space-aware vector autoregressive (SA-VAR) model to encode the geometry and color channels of each reference patch with and without the distorted patch, respectively. Assuming that the residual errors follow the multi-variate Gaussian distributions, the self-complexity of the reference and transformational complexity between the reference and distorted samples are computed using covariance matrices. Additionally, the prediction terms generated by SA-VAR are introduced as one auxiliary feature to promote the final quality prediction. The effectiveness of the proposed transformational complexity based distortion metric (TCDM) is evaluated through extensive experiments conducted on five public point cloud quality assessment databases. The results demonstrate that TCDM achieves state-of-the-art (SOTA) performance, and further analysis confirms its robustness in various scenarios. The code is publicly available at https://github.com/zyj1318053/TCDM.

Yujie Zhang, Qi Yang, Yifei Zhou, Xiaozhong Xu, Le Yang, Yiling Xu• 2022

Related benchmarks

TaskDatasetResultRank
Point Cloud Quality AssessmentWPC
PLCC0.795
48
Point Cloud Quality AssessmentSJTU-PCQA
PLCC0.924
38
Point Cloud Quality AssessmentPCQA Oc (Octree-based Compression Distortion)
PLCC0.899
23
Point Cloud Quality AssessmentICIP
PLCC0.958
12
Point Cloud Quality AssessmentPCQA Mx (Mixing Distortion)
PLCC0.932
12
Point Cloud Quality AssessmentALL
PLCC0.847
12
Point Cloud Quality AssessmentPCQA Tc (Trisoup-based Compression Distortion)
PLCC0.834
12
Point Cloud Quality AssessmentM-PCCD
PLCC0.921
12
Point Cloud Quality AssessmentPCQA Ns (Noise Distortion)
PLCC0.909
12
Point Cloud Quality AssessmentPCQA Vc (Video-based Compression Distortion)
PLCC0.647
12
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