Performance Evaluation of HDR Image Reconstruction Techniques on Light Field Images

Mary Guindy, V. K. Adhikarla, P. A. Kara, T. Balogh, Anikó Simon
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引用次数: 2

Abstract

The reconstruction of high dynamic range (HDR) images from low dynamic range (LDR) images is a challenging task. Multiple algorithms are implemented to perform the reconstruction process for HDR images and videos. These techniques include, but are not limited to reverse tone mapping, computational photography and convolutional neural networks (CNNs). From the aforementioned techniques, CNNs have proven to be the most efficient when tested against conventional 2D images and videos. However, at the time of this paper, applying such CNNs to light field contents have not yet been performed. Light field images impose more challenges and difficulties to the proposed CNNs, as there are multiple images for the creation of a single light field scene. In this paper, we test some of the existing HDR CNNs (ExpandNet, HDR-DeepCNN and DeepHDRVideo) on the Teddy light field image dataset and evaluate their performance using PSNR, SSIM and HDR-VDP 2.2.1. Our work addresses both image and video reconstruction techniques in the context of light field imaging. The results indicate that further modifications to the state-of-the-art reconstruction techniques are required to efficiently accommodate the spatial coherence in light field images.
光场图像上HDR图像重建技术的性能评价
从低动态范围(LDR)图像重建高动态范围(HDR)图像是一项具有挑战性的任务。实现了多种算法来执行HDR图像和视频的重建过程。这些技术包括但不限于反向色调映射、计算摄影和卷积神经网络(cnn)。从上述技术来看,cnn在对传统2D图像和视频进行测试时被证明是最有效的。然而,在本文发表时,还没有将这种cnn应用于光场内容。光场图像给所提出的cnn带来了更多的挑战和困难,因为创建单个光场场景需要多个图像。在本文中,我们在Teddy光场图像数据集上测试了现有的一些HDR cnn (ExpandNet, HDR- deepcnn和DeepHDRVideo),并使用PSNR, SSIM和HDR- vdp 2.2.1评估了它们的性能。我们的工作涉及光场成像背景下的图像和视频重建技术。结果表明,需要进一步改进最先进的重建技术,以有效地适应光场图像的空间相干性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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