Publication | Closed Access
Hierarchical Back Projection Network for Image Super-Resolution
53
Citations
34
References
2019
Year
Unknown Venue
Super-resolution ImagingConvolutional Neural NetworkMachine VisionImage AnalysisMachine LearningDeep LearningEngineeringImage Super-resolutionNonlinear MappingBack Projection BlocksVideo Super-resolutionSingle-image Super-resolutionImage HallucinationMedical Image ComputingComputer Vision
Deep learning based single image super-resolution methods use a large number of training datasets and have recently achieved great quality progress both quantitatively and qualitatively. Most deep networks focus on nonlinear mapping from low-resolution inputs to high-resolution outputs via residual learning without exploring the feature abstraction and analysis. We propose a Hierarchical Back Projection Network (HBPN), that cascades multiple HourGlass (HG) modules to bottom-up and top-down process features across all scales to capture various spatial correlations and then consolidates the best representation for reconstruction. We adopt the back projection blocks in our proposed network to provide the error correlated up-and down-sampling process to replace simple deconvolution and pooling process for better estimation. A new Softmax based Weighted Reconstruction (WR) process is used to combine the outputs of HG modules to further improve super-resolution. Experimental results on various datasets (including the validation dataset, NTIRE2019, of the Real Image Super-resolution Challenge) show that our proposed approach can achieve and improve the performance of the state-of-the-art methods for different scaling factors.
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