PAME: Self-Supervised Masked Autoencoder for No-Reference Point Cloud Quality Assessment
PAME: Self-Supervised Masked Autoencoder for No-Reference Point Cloud Quality Assessment
No-reference point cloud quality assessment (NR-PCQA) aims to automatically predict the perceptual quality of point clouds without reference, which has achieved remarkable performance due to the utilization of deep learning-based models. However, these data-driven models suffer from the scarcity of labeled data and perform unsatisfactorily in cross-dataset evaluations. To address this problem, we propose a self-supervised pre-training framework using masked autoencoders (PAME) to help the model learn useful representations without labels. Specifically, after projecting point clouds into images, our PAME employs dual-branch autoencoders, reconstructing masked patches from distorted images into the original patches within reference and distorted images. In this manner, the two branches can separately learn content-aware features and distortion-aware features from the projected images. Furthermore, in the model fine-tuning stage, the learned content-aware features serve as a guide to fuse the point cloud quality features extracted from different perspectives. Extensive experiments show that our method outperforms the state-of-the-art NR-PCQA methods on popular benchmarks in terms of prediction accuracy and generalizability.
Haichen Yang、Yujie Zhang、Shan Liu、Ziyu Shan、Yiling Xu、Qi Yang
计算技术、计算机技术电子技术应用
Haichen Yang,Yujie Zhang,Shan Liu,Ziyu Shan,Yiling Xu,Qi Yang.PAME: Self-Supervised Masked Autoencoder for No-Reference Point Cloud Quality Assessment[EB/OL].(2024-03-15)[2025-08-02].https://arxiv.org/abs/2403.10061.点此复制
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