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Single image HDR reconstruction using a CNN with masked features and perceptual loss

Marcel Santana Santos, Tsang Ing Ren, Nima Khademi Kalantari

2020ACM Transactions on Graphics136 citationsDOIOpen Access PDF

Abstract

Digital cameras can only capture a limited range of real-world scenes' luminance, producing images with saturated pixels. Existing single image high dynamic range (HDR) reconstruction methods attempt to expand the range of luminance, but are not able to hallucinate plausible textures, producing results with artifacts in the saturated areas. In this paper, we present a novel learning-based approach to reconstruct an HDR image by recovering the saturated pixels of an input LDR image in a visually pleasing way. Previous deep learning-based methods apply the same convolutional filters on wellexposed and saturated pixels, creating ambiguity during training and leading to checkerboard and halo artifacts. To overcome this problem, we propose a feature masking mechanism that reduces the contribution of the features from the saturated areas. Moreover, we adapt the VGG-based perceptual loss function to our application to be able to synthesize visually pleasing textures. Since the number of HDR images for training is limited, we propose to train our system in two stages. Specifically, we first train our system on a large number of images for image inpainting task and then fine-tune it on HDR reconstruction. Since most of the HDR examples contain smooth regions that are simple to reconstruct, we propose a sampling strategy to select challenging training patches during the HDR fine-tuning stage. We demonstrate through experimental results that our approach can reconstruct visually pleasing HDR results, better than the current state of the art on a wide range of scenes.

Topics & Concepts

Artificial intelligenceHallucinatingComputer visionComputer scienceInpaintingHigh dynamic rangePixelFeature (linguistics)GhostingRange (aeronautics)Image (mathematics)StereoscopyTone mappingIterative reconstructionDeep learningUpsamplingFocus (optics)Salience (neuroscience)Masking (illustration)Image restorationPerceptionConvolutional neural networkHigh-dynamic-range imagingMultiple exposureImage warpingImage resolutionAmbiguityPattern recognition (psychology)Feature extractionStereo imagingDepth perceptionImage Enhancement TechniquesGenerative Adversarial Networks and Image SynthesisComputer Graphics and Visualization Techniques