ACM MM2024 Best Paper Nomination
1Shanghai Jiaotong University, 2Nanyang Technological University
#Corresponding authors.
Paper |
Github |
Data
This part only introduces the usage of the projection branch with LMM.
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Prepare the environment of Q-Align.
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Download the projections and meta information from Huggingface.
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Modify the necessary input args of the `pcqa_eval.py' file in this repo and begin the inference with Q-Align.
Please contact any of the first authors of this paper for queries.
- Zicheng Zhang,
zzc1998@sjtu.edu.cn
, @zzc-1998
If you find our work interesting, please feel free to cite our paper:
@article{zhang2024lmm,
title={LMM-PCQA: Assisting Point Cloud Quality Assessment with LMM},
author={Zhang, Zicheng and Wu, Haoning and Zhou, Yingjie and Li, Chunyi and Sun, Wei and Chen, Chaofeng and Min, Xiongkuo and Liu, Xiaohong and Lin, Weisi and Zhai, Guangtao},
journal={ACM MM},
year={2024}
}