Publication | Closed Access
Interactive example-based terrain authoring with conditional generative adversarial networks
145
Citations
48
References
2017
Year
Artificial IntelligenceEngineeringMachine LearningSketch-based ModelingComputer-aided DesignGenerative SystemData ScienceGenerative ModelInteractive Example-based TerrainRobot LearningProcedural GenerationTerrain SynthesizerSynthetic Image GenerationGeometric ModelingGeographyComputer EngineeringGenerative ModelsComputer ScienceHuman Image SynthesisDeep LearningTerrain SynthesizersGenerative AiVirtual TerrainsProcedural Modeling
Authoring virtual terrains presents a challenge and there is a strong need for authoring tools able to create realistic terrains with simple user-inputs and with high user control. We propose an example-based authoring pipeline that uses a set of terrain synthesizers dedicated to specific tasks. Each terrain synthesizer is a Conditional Generative Adversarial Network trained by using real-world terrains and their sketched counterparts. The training sets are built automatically with a view that the terrain synthesizers learn the generation from features that are easy to sketch. During the authoring process, the artist first creates a rough sketch of the main terrain features, such as rivers, valleys and ridges, and the algorithm automatically synthesizes a terrain corresponding to the sketch using the learned features of the training samples. Moreover, an erosion synthesizer can also generate terrain evolution by erosion at a very low computational cost. Our framework allows for an easy terrain authoring and provides a high level of realism for a minimum sketch cost. We show various examples of terrain synthesis created by experienced as well as inexperienced users who are able to design a vast variety of complex terrains in a very short time.
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