We are excited to present our latest research paper proposing a large-scale quality assessment database for digital human heads (DHHs). Our database includes a total of 1,540 DHH models, including 55 high-quality reference stimuli and their corresponding manually degraded versions with 7 types of distortions.
We invited 255 human subjects to participate in the DHH scanning experiment. The reference DHH models, which cover both male and female, young and old subjects, are in the format of textured meshes. We carefully selected 55 high-quality generated DHH models as reference stimuli.
The 7 types of distortions we used to degrade the reference DHHs include surface simplification, position compression, UV compression, texture sub-sampling, texture compression, color noise, and geometry noise. We obtained a total of 1,540 distorted DHHs.
A well-controlled subjective experiment was conducted to collect mean opinion scores (MOS) for the distorted DHHs. We obtained the largest subject-rate quality assessment database for digital human heads (DHHQA).
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The database can be accessed here.
If you find our paper useful, please cite our work as:
@inproceedings{zhang2023perceptual,
title={Perceptual Quality Assessment for Digital Human Heads},
author={Zhang, Zicheng and Zhou, Yingjie and Sun, Wei and Min, Xiongkuo and Wu, Yuzhe and Zhai, Guangtao},
booktitle={IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)},
year={2023},
organization={IEEE}
}
