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InternVQA: Advancing Compressed Video QualityAssessment with Distilling Large Foundation Model

26 February 2025
Fengbin Guan
Zihao Yu
Yiting Lu
Xin Li
Zhibo Chen
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Abstract

Video quality assessment tasks rely heavily on the rich features required for video understanding, such as semantic information, texture, and temporal motion. The existing video foundational model, InternVideo2, has demonstrated strong potential in video understanding tasks due to its large parameter size and large-scale multimodal data pertaining. Building on this, we explored the transferability of InternVideo2 to video quality assessment under compression scenarios. To design a lightweight model suitable for this task, we proposed a distillation method to equip the smaller model with rich compression quality priors. Additionally, we examined the performance of different backbones during the distillation process. The results showed that, compared to other methods, our lightweight model distilled from InternVideo2 achieved excellent performance in compression video quality assessment.

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@article{guan2025_2502.19026,
  title={ InternVQA: Advancing Compressed Video QualityAssessment with Distilling Large Foundation Model },
  author={ Fengbin Guan and Zihao Yu and Yiting Lu and Xin Li and Zhibo Chen },
  journal={arXiv preprint arXiv:2502.19026},
  year={ 2025 }
}
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