Publication | Open Access
3D-Aware Scene Manipulation via Inverse Graphics
44
Citations
6
References
2018
Year
EngineeringMachine Learning3D Computer VisionImage AnalysisScene RepresentationDifferentiable RenderingRobot LearningComputational GeometryDisentangled RepresentationsSynthetic Image GenerationGeometric ModelingMachine VisionNeural NetworksHuman Image SynthesisDeep LearningComputer Vision3D VisionNatural SciencesExtended RealityScene UnderstandingInverse GraphicsScene Modeling
We aim to obtain an interpretable, expressive, and disentangled scene representation that contains comprehensive structural and textural information for each object. Previous scene representations learned by neural networks are often uninterpretable, limited to a single object, or lacking 3D knowledge. In this work, we propose 3D scene de-rendering networks (3D-SDN) to address the above issues by integrating disentangled representations for semantics, geometry, and appearance into a deep generative model. Our scene encoder performs inverse graphics, translating a scene into a structured object-wise representation. Our decoder has two components: a differentiable shape renderer and a neural texture generator. The disentanglement of semantics, geometry, and appearance supports 3D-aware scene manipulation, e.g., rotating and moving objects freely while keeping the consistent shape and texture, and changing the object appearance without affecting its shape. Experiments demonstrate that our editing scheme based on 3D-SDN is superior to its 2D counterpart.
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