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XPSR: Cross-modal Priors for Diffusion-based Image Super-Resolution


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The author proposes the XPSR framework to address challenges in restoring semantic details in Image Super-Resolution by leveraging cross-modal priors from Multimodal Large Language Models (MLLMs) and introducing Semantic-Fusion Attention and Degradation-Free Constraint.
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The XPSR framework aims to enhance Image Super-Resolution by utilizing cutting-edge MLLMs to extract accurate semantic priors, integrating Semantic-Fusion Attention for effective fusion of cross-modal priors, and applying a Degradation-Free Constraint to retain semantic information. The proposed method shows promising results in generating high-fidelity and realistic images across various datasets.

Key Points:

  • Introduction of XPSR framework for Image Super-Resolution.
  • Utilization of MLLMs for extracting precise semantic priors.
  • Implementation of Semantic-Fusion Attention for optimal fusion of priors.
  • Application of Degradation-Free Constraint to preserve semantic information.
  • Demonstrated capability in generating high-quality images across synthetic and real-world datasets.
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Statistieken
Quantitative results show that XPSR achieves: SSIM: 0.6870 LPIPS: 0.3517 FID: 141.95
Citaten
"Noisy latent zt hr, high-level prompt ch, and low-level prompt cl are used to predict the added noise." "XPSR demonstrates a strong capability in generating high-fidelity and high-realism images." "The integration of dual-level priors facilitates balancing for image restoration."

Belangrijkste Inzichten Gedestilleerd Uit

by Yunpeng Qu,K... om arxiv.org 03-11-2024

https://arxiv.org/pdf/2403.05049.pdf
XPSR

Diepere vragen

How can the utilization of negative prompts impact the quality of image restoration?

The utilization of negative prompts in Image Super-Resolution (ISR) tasks can have a significant impact on the quality of image restoration. Negative prompts are used to guide the generation process by providing cues on what not to include in the final output. By incorporating negative prompts, the model is encouraged to focus on specific aspects or details while avoiding undesirable artifacts or distortions that may be present in the input images. Negative prompts help refine and fine-tune the restoration process by steering it away from generating unrealistic features or inaccuracies that might otherwise be introduced during super-resolution. This guidance ensures that the restored images maintain fidelity and coherence while minimizing errors or inconsistencies that could arise without such constraints. In essence, negative prompts act as a form of regularization for ISR models, enhancing their ability to produce high-quality and visually appealing results by guiding them towards more accurate and realistic image restorations.

How might updating evaluation metrics improve the assessment of Image Super-Resolution methods?

Updating evaluation metrics plays a crucial role in improving the assessment of Image Super-Resolution (ISR) methods by aligning with human perception more accurately and capturing nuances beyond traditional fidelity measures like PSNR and SSIM. Here are some ways in which updating evaluation metrics can enhance ISR assessments: Perceptual Quality: New metrics like LPIPS, MANIQA, MUSIQ, CLIPIQA focus on perceptual quality rather than just numerical values like PSNR. These metrics consider factors such as texture realism, color accuracy, sharpness, and overall visual appeal. Realism Assessment: Metrics like FID evaluate how closely generated images match real-world distributions. This helps assess whether ISR methods produce authentic-looking results comparable to actual high-resolution images. Semantic Understanding: Metrics should account for semantic content preservation in restored images—how well objects are identified, contextual information is retained, and scene understanding is maintained post-restoration. Human Perception Alignment: Evaluation criteria should aim to mimic human judgment more closely by considering subjective preferences related to aesthetics, naturalness, detail clarity, etc., ensuring evaluations reflect real-world usability better. By updating evaluation metrics with these considerations in mind, ISR assessments can provide a more comprehensive view of method performance beyond basic pixel-level comparisons.

What are implications of using different base T2I diffusion models on XPSR's performance?

The choice of base Text-to-Image (T2I) diffusion model has significant implications for XPSR's performance: Model Capabilities: Different T2I models vary in terms of architecture complexity, pre-training data size/scope which influences their generative capabilities. Training Dynamics: The training dynamics differ based on model intricacy, convergence speed affecting optimization stability & final performance. 3 .Generalization Ability: Models trained under diverse conditions exhibit varying generalization capacities impacting how well they adapt to unseen data. 4 .Computational Efficiency: More complex models require higher computational resources potentially limiting scalability & practical deployment feasibility. 5 .Fine-Tuning Flexibility: Some models may offer better fine-tuning mechanisms aiding adaptation specifically for super-resolution tasks optimizing outcomes further. Selecting an appropriate base T2I diffusion model involves balancing these factors to optimize XPSR's effectiveness across various datasets & scenarios ensuring superior performance aligned with project objectives & requirements
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