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Papers/Learning Accurate and Enriched Features for Stereo Image S...

Learning Accurate and Enriched Features for Stereo Image Super-Resolution

Hu Gao, Depeng Dang

2024-06-23Super-ResolutionImage Super-ResolutionStereo Image Super-Resolution
PaperPDFCode(official)

Abstract

Stereo image super-resolution (stereoSR) aims to enhance the quality of super-resolution results by incorporating complementary information from an alternative view. Although current methods have shown significant advancements, they typically operate on representations at full resolution to preserve spatial details, facing challenges in accurately capturing contextual information. Simultaneously, they utilize all feature similarities to cross-fuse information from the two views, potentially disregarding the impact of irrelevant information. To overcome this problem, we propose a mixed-scale selective fusion network (MSSFNet) to preserve precise spatial details and incorporate abundant contextual information, and adaptively select and fuse most accurate features from two views to enhance the promotion of high-quality stereoSR. Specifically, we develop a mixed-scale block (MSB) that obtains contextually enriched feature representations across multiple spatial scales while preserving precise spatial details. Furthermore, to dynamically retain the most essential cross-view information, we design a selective fusion attention module (SFAM) that searches and transfers the most accurate features from another view. To learn an enriched set of local and non-local features, we introduce a fast fourier convolution block (FFCB) to explicitly integrate frequency domain knowledge. Extensive experiments show that MSSFNet achieves significant improvements over state-of-the-art approaches on both quantitative and qualitative evaluations.

Results

TaskDatasetMetricValueModel
Super-ResolutionMiddlebury - 4x upscalingPSNR29.77MSSFNet
Super-ResolutionMiddlebury - 2x upscalingPSNR35.82MSSFNet
Super-ResolutionKITTI2012 - 4x upscalingPSNR26.97MSSFNet
Super-ResolutionFlickr1024 - 2x upscalingPSNR29.45MSSFNet
Super-ResolutionFlickr1024 - 4x upscalingPSNR23.99MSSFNet
Super-ResolutionKITTI2012 - 2x upscalingPSNR31.53MSSFNet
Super-ResolutionKITTI2015 - 2x upscalingPSNR31.16MSSFNet
Super-ResolutionKITTI2015 - 4x upscalingPSNR26.82MSSFNet
Image Super-ResolutionMiddlebury - 4x upscalingPSNR29.77MSSFNet
Image Super-ResolutionMiddlebury - 2x upscalingPSNR35.82MSSFNet
Image Super-ResolutionKITTI2012 - 4x upscalingPSNR26.97MSSFNet
Image Super-ResolutionFlickr1024 - 2x upscalingPSNR29.45MSSFNet
Image Super-ResolutionFlickr1024 - 4x upscalingPSNR23.99MSSFNet
Image Super-ResolutionKITTI2012 - 2x upscalingPSNR31.53MSSFNet
Image Super-ResolutionKITTI2015 - 2x upscalingPSNR31.16MSSFNet
Image Super-ResolutionKITTI2015 - 4x upscalingPSNR26.82MSSFNet
3D Object Super-ResolutionMiddlebury - 4x upscalingPSNR29.77MSSFNet
3D Object Super-ResolutionMiddlebury - 2x upscalingPSNR35.82MSSFNet
3D Object Super-ResolutionKITTI2012 - 4x upscalingPSNR26.97MSSFNet
3D Object Super-ResolutionFlickr1024 - 2x upscalingPSNR29.45MSSFNet
3D Object Super-ResolutionFlickr1024 - 4x upscalingPSNR23.99MSSFNet
3D Object Super-ResolutionKITTI2012 - 2x upscalingPSNR31.53MSSFNet
3D Object Super-ResolutionKITTI2015 - 2x upscalingPSNR31.16MSSFNet
3D Object Super-ResolutionKITTI2015 - 4x upscalingPSNR26.82MSSFNet
16kMiddlebury - 4x upscalingPSNR29.77MSSFNet
16kMiddlebury - 2x upscalingPSNR35.82MSSFNet
16kKITTI2012 - 4x upscalingPSNR26.97MSSFNet
16kFlickr1024 - 2x upscalingPSNR29.45MSSFNet
16kFlickr1024 - 4x upscalingPSNR23.99MSSFNet
16kKITTI2012 - 2x upscalingPSNR31.53MSSFNet
16kKITTI2015 - 2x upscalingPSNR31.16MSSFNet
16kKITTI2015 - 4x upscalingPSNR26.82MSSFNet

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