Deep Polycuboid Fitting for Compact 3D Representation of Indoor Scenes

Published: 23 Mar 2025, Last Modified: 24 Mar 20253DV 2025 PosterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: shape abstraction; polycuboid; cuboid; point cloud; indoor scene; shape representation and features; shape recognition and analysis; space
Abstract:

This paper presents a novel framework for compactly representing a 3D indoor scene using a set of polycuboids through a deep learning-based fitting method. Indoor scenes mainly consist of man-made objects, such as furniture, which often exhibit rectilinear geometry. This property allows indoor scenes to be represented using combinations of polycuboids, providing a compact representation that benefits downstream applications like furniture rearrangement. Our framework takes a noisy point cloud as input and first detects six types of cuboid faces using a transformer network. Then, a graph neural network is used to validate the spatial relationships of the detected faces to form potential polycuboids. Finally, each polycuboid instance is reconstructed by forming a set of boxes based on the aggregated face labels. To train our networks, we introduce a synthetic dataset encompassing a diverse range of cuboid and polycuboid shapes that reflect the characteristics of indoor scenes. Our framework generalizes well to real-world indoor scene datasets, including Replica, ScanNet, and scenes captured with an iPhone. The versatility of our method is demonstrated through practical applications, such as virtual room tours and scene editing.

Supplementary Material: zip
Submission Number: 245
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