All-Weather Deep Outdoor Lighting Estimation

Jinsong Zhang, Kalyan Sunkavalli, Yannick Hold-Geoffroy, Sunil Hadap, Jonathan Eisenmann, Jean-François Lalonde
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引用次数: 54

Abstract

We present a neural network that predicts HDR outdoor illumination from a single LDR image. At the heart of our work is a method to accurately learn HDR lighting from LDR panoramas under any weather condition. We achieve this by training another CNN (on a combination of synthetic and real images) to take as input an LDR panorama, and regress the parameters of the Lalonde-Mathews outdoor illumination model. This model is trained such that it a) reconstructs the appearance of the sky, and b) renders the appearance of objects lit by this illumination. We use this network to label a large-scale dataset of LDR panoramas with lighting parameters and use them to train our single image outdoor lighting estimation network. We demonstrate, via extensive experiments, that both our panorama and singe image networks outperform the state of the art, and unlike prior work, are able to handle weather conditions ranging from fully sunny to overcast skies.
全天候深户外照明估计
我们提出了一个神经网络,从单个LDR图像预测HDR户外照明。我们工作的核心是一种在任何天气条件下从LDR全景图中准确学习HDR照明的方法。我们通过训练另一个CNN(在合成和真实图像的组合上)将LDR全景作为输入,并回归Lalonde-Mathews室外照明模型的参数来实现这一点。这个模型被训练成这样:a)重建天空的外观,b)渲染被这个照明照亮的物体的外观。我们使用该网络对LDR全景图的大规模数据集进行照明参数标记,并使用它们来训练我们的单幅图像户外照明估计网络。我们通过大量的实验证明,我们的全景和单图像网络都优于目前的技术水平,并且与之前的工作不同,我们能够处理从完全晴朗到阴天的天气条件。
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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