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Physically-inspired Deep Light Estimation from a Homogeneous-Material Object for Mixed Reality Lighting

机译:从混合现实照明的均质材料对象的物理启发深度光估计

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In mixed reality (MR), augmenting virtual objects consistently with real-world illumination is one of the key factors that provide a realistic and immersive user experience. For this purpose, we propose a novel deep learning-based method to estimate high dynamic range (HDR) illumination from a single RGB image of a reference object. To obtain illumination of a current scene, previous approaches inserted a special camera in that scene, which may interfere with user's immersion, or they analyzed reflected radiances from a passive light probe with a specific type of materials or a known shape. The proposed method does not require any additional gadgets or strong prior cues, and aims to predict illumination from a single image of an observed object with a wide range of homogeneous materials and shapes. To effectively solve this ill-posed inverse rendering problem, three sequential deep neural networks are employed based on a physically-inspired design. These networks perform end-to-end regression to gradually decrease dependency on the material and shape. To cover various conditions, the proposed networks are trained on a large synthetic dataset generated by physically-based rendering. Finally, the reconstructed HDR illumination enables realistic image-based lighting of virtual objects in MR. Experimental results demonstrate the effectiveness of this approach compared against state-of-the-art methods. The paper also suggests some interesting MR applications in indoor and outdoor scenes.
机译:在混合现实(MR)中,使用现实世界的照明始终如一地增强虚拟物体是提供现实和沉浸式用户体验的关键因素之一。为此目的,我们提出了一种新的深度学习的方法来估计来自参考对象的单个RGB图像的高动态范围(HDR)照明。为了获得当前场景的照明,之前的方法在该场景中插入了一种特殊的相机,其可能干扰用户的浸没,或者它们分析了具有特定类型材料或已知形状的被动光探针的反射辐射。所提出的方法不需要任何额外的小工具或强先前提示,并旨在预测观察到的对象的单个图像的照明,具有各种均匀的材料和形状。为了有效解决这种不良反向渲染问题,基于物理启发设计采用了三个顺序深度神经网络。这些网络执行端到端回归,以逐渐减少对材料和形状的依赖性。为了涵盖各种条件,所提出的网络培训在由基于物理的渲染生成的大型合成数据集上培训。最后,重建的HDR照明能够在MR中的虚拟对象的基于现实的图像照明。实验结果表明,这种方法与最先进的方法相比的有效性。本文还建议室内和室外场景中有些有趣的MR应用。

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