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Papers/BurstM: Deep Burst Multi-scale SR using Fourier Space with...

BurstM: Deep Burst Multi-scale SR using Fourier Space with Optical Flow

EungGu Kang, Byeonghun Lee, Sunghoon Im, Kyong Hwan Jin

2024-09-21Super-ResolutionBurst Image Super-ResolutionMulti-Frame Super-ResolutionOptical Flow EstimationImage Super-Resolution
PaperPDFCode(official)

Abstract

Multi frame super-resolution(MFSR) achieves higher performance than single image super-resolution (SISR), because MFSR leverages abundant information from multiple frames. Recent MFSR approaches adapt the deformable convolution network (DCN) to align the frames. However, the existing MFSR suffers from misalignments between the reference and source frames due to the limitations of DCN, such as small receptive fields and the predefined number of kernels. From these problems, existing MFSR approaches struggle to represent high-frequency information. To this end, we propose Deep Burst Multi-scale SR using Fourier Space with Optical Flow (BurstM). The proposed method estimates the optical flow offset for accurate alignment and predicts the continuous Fourier coefficient of each frame for representing high-frequency textures. In addition, we have enhanced the network flexibility by supporting various super-resolution (SR) scale factors with the unimodel. We demonstrate that our method has the highest performance and flexibility than the existing MFSR methods. Our source code is available at https://github.com/Egkang-Luis/burstm

Results

TaskDatasetMetricValueModel
Super-ResolutionSyntheticBurstPSNR42.87BurstM
Super-ResolutionSyntheticBurstSSIM0.973BurstM
Super-ResolutionBurstSRPSNR49.12BurstM
Super-ResolutionBurstSRSSIM0.987BurstM
Image Super-ResolutionSyntheticBurstPSNR42.87BurstM
Image Super-ResolutionSyntheticBurstSSIM0.973BurstM
Image Super-ResolutionBurstSRPSNR49.12BurstM
Image Super-ResolutionBurstSRSSIM0.987BurstM
3D Object Super-ResolutionSyntheticBurstPSNR42.87BurstM
3D Object Super-ResolutionSyntheticBurstSSIM0.973BurstM
3D Object Super-ResolutionBurstSRPSNR49.12BurstM
3D Object Super-ResolutionBurstSRSSIM0.987BurstM
16kSyntheticBurstPSNR42.87BurstM
16kSyntheticBurstSSIM0.973BurstM
16kBurstSRPSNR49.12BurstM
16kBurstSRSSIM0.987BurstM

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