DeepCloud. The Application of a Data-driven, Generative Model in Design (2018)
article⁄DeepCloud. The Application of a Data-driven, Generative Model in Design (2018)
abstract⁄Generative systems have a significant potential to synthesize innovative design alternatives. Still, most of the common systems that have been adopted in design require the designer to explicitly define the specifications of the procedures and in some cases the design space. In contrast, a generative system could potentially learn both aspects through processing a database of existing solutions without the supervision of the designer. To explore this possibility, we review recent advancements of generative models in machine learning and current applications of learning techniques in design. Then, we describe the development of a datadriven generative system titled DeepCloud. It combines an autoencoder architecture for point clouds with a webbased interface and analog input devices to provide an intuitive experience for datadriven generation of design alternatives. We delineate the implementation of two prototypes of DeepCloud, their contributions, and potentials for generative design.
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Year |
2018 |
Authors |
Bidgoli, Ardavan; Veloso, Pedro. |
Issue |
ACADIA 2018: Recalibration. On imprecisionand infidelity. |
Pages |
176-185 |
Library link |
N/A |
Entry filename |
deepcloud-application-data-driven-generative-model |