Publication | Closed Access
Intelligent Home 3D: Automatic 3D-House Design From Linguistic Descriptions Only
47
Citations
47
References
2020
Year
Unknown Venue
EngineeringMachine LearningHome Design3D ModelingHouse PlanComputer-aided DesignGenerative SystemNatural Language Processing3D Computer VisionGenerative DesignComputational GeometrySynthetic Image GenerationGeometric ModelingInterior TextureDesignIntelligent Home 3DGenerative ModelsComputer ScienceHuman Image SynthesisDeep LearningComputer VisionArchitectural Design3D VisionNatural SciencesScene Modeling
Home design is a complex task that normally requires architects to finish with their professional skills and tools. It will be fascinating that if one can produce a house plan intuitively without knowing much knowledge about home design and experience of using complex designing tools, for example, via natural language. In this paper, we formulate it as a language conditioned visual content generation problem that is further divided into a floor plan generation and an interior texture (such as floor and wall) synthesis task. The only control signal of the generation process is the linguistic expression given by users that describe the house details. To this end, we propose a House Plan Generative Model (HPGM) that first translates the language input to a structural graph representation and then predicts the layout of rooms with a Graph Conditioned Layout Prediction Network (GC-LPN) and generates the interior texture with a Language Conditioned Texture GAN (LCT-GAN). With some post-processing, the final product of this task is a 3D house model. To train and evaluate our model, we build the first Text-to-3D House Model dataset, which will be released at: https:// hidden-link-for-submission.
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