PromptIQA revolutionizes Image Quality Assessment by adapting to new requirements without the need for extensive datasets. It utilizes prompts effectively, leading to higher performance and improved generalization.
Existing IQA models struggle with varied assessment requirements, prompting the need for PromptIQA.
The model's effectiveness is demonstrated through experiments on mixed datasets from various IQA tasks.
Two data augmentation strategies enhance the model's ability to learn assessment requirements effectively.
The number of ISPs in an ISPP impacts the model's performance, showing increased effectiveness with more ISPs.
Randomizing or inverting ISP prompts significantly reduces the model's performance, highlighting the importance of meaningful prompts.
PromptIQA showcases superior adaptability and performance in handling new assessment requirements efficiently.
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arxiv.org
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