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3 months ago

EBSR: Feature Enhanced Burst Super-Resolution With Deformable Alignment

{Shuaicheng Liu Jian Sun Haoqiang Fan Lanpeng Jia Youwei Li Xuan Mo Lei Yu Ziwei Luo}

EBSR: Feature Enhanced Burst Super-Resolution With Deformable Alignment

Abstract

We propose a novel architecture to handle the problem of multi-frame super-resolution (MFSR). The proposed framework is known as Enhanced Burst Super-Resolution (EBSR), which divides the MFSR problem into three parts: alignment, fusion, and reconstruction. We propose a Feature Enhanced Pyramid Cascading and Deformable convolution (FEPCD) module to align multiple low-resolution burst images in the feature level. And then the aligned features are fused by a Cross Non-Local Fusion (CNLF) module. Finally, the SR image is reconstructed by the Long Range Concatenation Network (LRCN). In addition, we build a cascading residual pathway structure (CR) to improve the performance. We conduct several experiments to analyze and demonstrate these modules. Our EBSR model won the champion in the real track and second place in the synthetic track in the NTIRE21 Burst Super-Resolution Challenge.

Benchmarks

BenchmarkMethodologyMetrics
burst-image-super-resolution-onEBSR
LPIPS: 0.031
PSNR: 42.98
SSIM: 0.972
burst-image-super-resolution-on-burstsrEBSR
LPIPS: 0.024
PSNR: 48.23
SSIM: 0.985

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EBSR: Feature Enhanced Burst Super-Resolution With Deformable Alignment | Papers | HyperAI