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Fast 3D Indoor Scene Synthesis by Learning Spatial Relation Priors of Objects

Song–Hai Zhang, Shao-Kui Zhang, Weiyu Xie, Chengyang Luo, Yong‐Liang Yang, Hongbo Fu

2021IEEE Transactions on Visualization and Computer Graphics34 citationsDOIOpen Access PDF

Abstract

We present a framework for fast synthesizing indoor scenes, given a room geometry and a list of objects with learnt priors. Unlike existing data-driven solutions, which often learn priors by co-occurrence analysis and statistical model fitting, our method measures the strengths of spatial relations by tests for complete spatial randomness (CSR), and learns discrete priors based on samples with the ability to accurately represent exact layout patterns. With the learnt priors, our method achieves both acceleration and plausibility by partitioning the input objects into disjoint groups, followed by layout optimization using position-based dynamics (PBD) based on the Hausdorff metric. Experiments show that our framework is capable of measuring more reasonable relations among objects and simultaneously generating varied arrangements in seconds compared with the state-of-the-art works.

Topics & Concepts

Prior probabilityComputer scienceRandomnessHausdorff distanceRelation (database)Metric (unit)Artificial intelligenceDisjoint setsPosition (finance)Spatial relationComputer visionPattern recognition (psychology)Data miningMathematicsBayesian probabilityStatisticsFinanceOperations managementCombinatoricsEconomics3D Shape Modeling and AnalysisAdvanced Vision and Imaging3D Surveying and Cultural Heritage