Super Resolution


Super-resolution is a task in computer vision that involves increasing the resolution of an image or video by generating missing high-frequency details from low-resolution input. The goal is to produce an output image with a higher resolution than the input image, while preserving the original content and structure.

InstanceRSR: Real-World Super-Resolution via Instance-Aware Representation Alignment

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Mar 25, 2026
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RefReward-SR: LR-Conditioned Reward Modeling for Preference-Aligned Super-Resolution

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Mar 25, 2026
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ScrollScape: Unlocking 32K Image Generation With Video Diffusion Priors

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Mar 25, 2026
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VoDaSuRe: A Large-Scale Dataset Revealing Domain Shift in Volumetric Super-Resolution

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Mar 24, 2026
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From Pixels to Semantics: A Multi-Stage AI Framework for Structural Damage Detection in Satellite Imagery

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Mar 24, 2026
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Unregistered Spectral Image Fusion: Unmixing, Adversarial Learning, and Recoverability

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Mar 23, 2026
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DUO-VSR: Dual-Stream Distillation for One-Step Video Super-Resolution

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Mar 23, 2026
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Single-Subject Multi-View MRI Super-Resolution via Implicit Neural Representations

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Mar 23, 2026
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Speed by Simplicity: A Single-Stream Architecture for Fast Audio-Video Generative Foundation Model

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Mar 23, 2026
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OmniFM: Toward Modality-Robust and Task-Agnostic Federated Learning for Heterogeneous Medical Imaging

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Mar 23, 2026
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