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Progressive and Selective Fusion Network for High Dynamic Range Imaging

Qian Ye, Jun Xiao, Kin‐Man Lam, Takayuki Okatani

202118 citationsDOI

Abstract

This paper considers the problem of generating an HDR image of a scene from its LDR images. Recent studies employ deep learning and solve the problem in an end-to-end fashion, leading to significant performance improvements. However, it is still hard to generate a good quality image from LDR images of a dynamic scene captured by a hand-held camera, e.g., occlusion due to the large motion of foreground objects, causing ghosting artifacts. The key to success relies on how well we can fuse the input images in their feature space, where we wish to remove the factors leading to low-quality image generation while performing the fundamental computations for HDR image generation, e.g., selecting the best-exposed image/region. We propose a novel method that can better fuse the features based on two ideas. One is multi-step feature fusion; our network gradually fuses the features in a stack of blocks having the same structure. The other is the design of the component block that effectively performs two operations essential to the problem, i.e., comparing and selecting appropriate images/regions. Experimental results show that the proposed method outperforms the previous state-of-the-art methods on the standard benchmark tests.

Topics & Concepts

GhostingComputer scienceFuse (electrical)Artificial intelligenceComputer visionBlock (permutation group theory)Benchmark (surveying)Feature (linguistics)Image (mathematics)Image fusionHigh dynamic rangeImage qualityHigh-dynamic-range imagingDynamic rangeMathematicsEngineeringLinguisticsGeodesyPhilosophyGeometryElectrical engineeringGeographyImage Enhancement TechniquesAdvanced Image Processing TechniquesAdvanced Vision and Imaging