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Neural Inverse Rendering of an Indoor Scene From a Single Image

机译:从单个图像对室内场景进行神经逆向渲染

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Inverse rendering aims to estimate physical attributes of a scene, e.g., reflectance, geometry, and lighting, from image(s). Inverse rendering has been studied primarily for single objects or with methods that solve for only one of the scene attributes. We propose the first learning based approach that jointly estimates albedo, normals, and lighting of an indoor scene from a single image. Our key contribution is the Residual Appearance Renderer (RAR), which can be trained to synthesize complex appearance effects (e.g., inter-reflection, cast shadows, near-field illumination, and realistic shading), which would be neglected otherwise. This enables us to perform self-supervised learning on real data using a reconstruction loss, based on re-synthesizing the input image from the estimated components. We finetune with real data after pretraining with synthetic data. To this end, we use physically-based rendering to create a large-scale synthetic dataset, named SUNCG-PBR, which is a significant improvement over prior datasets. Experimental results show that our approach outperforms state-of-the-art methods that estimate one or more scene attributes.
机译:逆渲染旨在根据图像来估计场景的物理属性,例如反射率,几何形状和照明。逆向渲染主要是针对单个对象或仅解决一种场景属性的方法进行研究。我们提出了第一种基于学习的方法,该方法可以从单个图像联合估计反照率,法线和室内场景的光照。我们的主要贡献是残留外观渲染器(RAR),可以对其进行训练以合成复杂的外观效果(例如,相互反射,投射阴影,近场照明和逼真的阴影),否则可以忽略不计。这使我们能够基于重建的估计分量重新合成输入图像,从而利用重建损失对真实数据进行自我监督学习。在对合成数据进行预训练之后,我们会对实际数据进行微调。为此,我们使用基于物理的渲染来创建名为SUNCG-PBR的大规模合成数据集,这是对先前数据集的重大改进。实验结果表明,我们的方法优于估计一种或多种场景属性的最新方法。

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