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Large Multi-modality Model Assisted AI-Generated Image Quality Assessment

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Traditional deep neural network (DNN)-based image quality assessment (IQA) models leverage convolutional neural networks (CNN) or Transformer to learn the quality-aware feature representation, achieving commendable performance on natural scene images. However, when applied to AI-Generated images (AGIs), these DNN-based IQA models exhibit subpar performance. This situation is largely due to the semantic inaccuracies inherent in certain AGIs caused by uncontrollable nature of the generation process. Thus, the capability to discern semantic content becomes crucial for assessing the quality of AGIs. Traditional DNN-based IQA models, constrained by limited parameter complexity and training data, struggle to capture complex fine-grained semantic features, making it challenging to grasp the existence and coherence of semantic content of the entire image. To address the shortfall in semantic content perception of current IQA models, we introduce a large Multi-modality model Assisted AI-Generated Image Quality Assessment (MA-AGIQA) model, which utilizes semantically informed guidance to sense semantic information and extract semantic vectors through carefully designed text prompts. Moreover, it employs a mixture of experts (MoE) structure to dynamically integrate the semantic information with the quality-aware features extracted by traditional DNN-based IQA models. Comprehensive experiments conducted on two AI-generated content datasets, AIGCQA-20k and AGIQA-3k show that MA-AGIQA achieves state-of-the-art performance, and demonstrate its superior generalization capabilities on assessing the quality of AGIs. Code is available at https://github.com/wangpuyi/MA-AGIQA.

Puyi Wang, Wei Sun, Zicheng Zhang, Jun Jia, Yanwei Jiang, Zhichao Zhang, Xiongkuo Min, Guangtao Zhai• 2024

Related benchmarks

TaskDatasetResultRank
Image Quality AssessmentSPAQ
SRCC0.927
191
Image Quality AssessmentAGIQA-3K
SRCC0.893
112
Image Quality AssessmentKonIQ-10k
SRCC0.933
96
Image Quality AssessmentAGIQA 3K (test)
SRCC0.893
84
Visual Quality AssessmentAIGCIQA 2023
SRCC0.853
34
Image Quality AssessmentAIGIQA-20K (test)
SRCC0.864
23
Visual Quality AssessmentAIGIQA-20K
SRCC0.864
22
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