Non-Aligned Reference Image Quality Assessment for Novel View Synthesis
PositiveArtificial Intelligence
The introduction of the Non-Aligned Reference Image Quality Assessment (NAR-IQA) framework marks a significant advancement in the field of image quality evaluation, particularly for Novel View Synthesis (NVS). Traditional methods like Full-Reference Image Quality Assessment (FR-IQA) and No-Reference Image Quality Assessment (NR-IQA) struggle with misalignment and generalization, respectively. The NAR-IQA framework addresses these issues by leveraging a large-scale dataset of synthetic distortions targeting Temporal Regions of Interest (TROI). Trained exclusively on these synthetic distortions, the model avoids overfitting to specific real NVS samples, enhancing its generalization capability. Notably, the NAR-IQA model outperforms state-of-the-art FR-IQA, NR-IQA, and NAR-IQA methods, demonstrating robust performance on both aligned and non-aligned references. Additionally, a user study revealed a strong correlation between the proposed quality prediction model and subjective human ratin…
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