Machine learning based co-creative design framework

23 Jan 2020  ·  Brian Quanz, Wei Sun, Ajay Deshpande, Dhruv Shah, Jae-Eun Park ·

We propose a flexible, co-creative framework bringing together multiple machine learning techniques to assist human users to efficiently produce effective creative designs. We demonstrate its potential with a perfume bottle design case study, including human evaluation and quantitative and qualitative analyses.

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