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.

CATformer: Contrastive Adversarial Transformer for Image Super-Resolution

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Aug 25, 2025
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A holistic perception system of internal and external monitoring for ground autonomous vehicles: AutoTRUST paradigm

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Aug 25, 2025
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TinySR: Pruning Diffusion for Real-World Image Super-Resolution

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Aug 24, 2025
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Neural Proteomics Fields for Super-resolved Spatial Proteomics Prediction

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Aug 24, 2025
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Structural Damage Detection Using AI Super Resolution and Visual Language Model

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Aug 23, 2025
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HiCache: Training-free Acceleration of Diffusion Models via Hermite Polynomial-based Feature Caching

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Aug 23, 2025
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Zero-shot Volumetric CT Super-Resolution using 3D Gaussian Splatting with Upsampled 2D X-ray Projection Priors

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Aug 21, 2025
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Potential and challenges of generative adversarial networks for super-resolution in 4D Flow MRI

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Aug 20, 2025
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Img2ST-Net: Efficient High-Resolution Spatial Omics Prediction from Whole Slide Histology Images via Fully Convolutional Image-to-Image Learning

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Aug 20, 2025
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SNNSIR: A Simple Spiking Neural Network for Stereo Image Restoration

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Aug 17, 2025
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