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.

CondiQuant: Condition Number Based Low-Bit Quantization for Image Super-Resolution

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Feb 21, 2025
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GVTNet: Graph Vision Transformer For Face Super-Resolution

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Feb 18, 2025
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DeltaDiff: A Residual-Guided Diffusion Model for Enhanced Image Super-Resolution

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Feb 18, 2025
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Multi Image Super Resolution Modeling for Earth System Models

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Feb 18, 2025
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VoLUT: Efficient Volumetric streaming enhanced by LUT-based super-resolution

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Feb 17, 2025
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Per-channel autoregressive linear prediction padding in tiled CNN processing of 2D spatial data

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Feb 17, 2025
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Accelerated Gradient-based Design Optimization Via Differentiable Physics-Informed Neural Operator: A Composites Autoclave Processing Case Study

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Feb 17, 2025
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LegalCore: A Dataset for Legal Documents Event Coreference Resolution

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Feb 18, 2025
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Deep EEG Super-Resolution: Upsampling EEG Spatial Resolution with Generative Adversarial Networks

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Feb 12, 2025
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Spatial Degradation-Aware and Temporal Consistent Diffusion Model for Compressed Video Super-Resolution

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Feb 12, 2025
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