Semantic Scene Completion aims at reconstructing a complete 3D scene with precise voxel-wise semantics from a single-view depth or RGBD image. It is a crucial but challenging problem for indoor scene understanding. In this work, we present a novel framework named Scene-Instance-Scene Network (\textit{SISNet}), which takes advantages of both instance and scene level semantic information. Our method is capable of inferring fine-grained shape details as well as nearby objects whose semantic categories are easily mixed-up. The key insight is that we decouple the instances from a coarsely completed semantic scene instead of a raw input image to guide the reconstruction of instances and the overall scene. SISNet conducts iterative scene-to-instance (SI) and instance-to-scene (IS) semantic completion. Specifically, the SI is able to encode objects' surrounding context for effectively decoupling instances from the scene and each instance could be voxelized into higher resolution to capture finer details. With IS, fine-grained instance information can be integrated back into the 3D scene and thus leads to more accurate semantic scene completion. Utilizing such an iterative mechanism, the scene and instance completion benefits each other to achieve higher completion accuracy. Extensively experiments show that our proposed method consistently outperforms state-of-the-art methods on both real NYU, NYUCAD and synthetic SUNCG-RGBD datasets. The code and the supplementary material will be available at \url{https://github.com/yjcaimeow/SISNet}.
翻译:语义 Special Special Special Complication Complicate 旨在从单一视图深度或 RGBD 图像中重建完整的 3D 场景, 精确的 voxel 和 rGBD 的语义。 这是一个关键但具有挑战性的问题, 需要室内了解。 在此工作中, 我们展示了一个名为 Scene- Instance- Scene 网络(\ textitit{SISNet} ) 的新框架, 它既具有实例和场景级语义信息的好处。 我们的方法可以将精细微的形状细节以及其语义分类类别容易混杂的附近物体进行推断。 关键的观察是, 我们从一个粗略的语义化的语义学场文义场景, 而不是一个原始输入图像来指导事件和整个场景的重建。 SIS, 精细化的DNA 和Sildrial Serviewal Serviews 信息可以追溯到更精确的完成方法 。