Neuro-Symbolic Generative Art: A Preliminary Study
- URL: http://arxiv.org/abs/2007.02171v1
- Date: Sat, 4 Jul 2020 19:40:00 GMT
- Title: Neuro-Symbolic Generative Art: A Preliminary Study
- Authors: Gunjan Aggarwal, Devi Parikh
- Abstract summary: We propose a new hybrid genre: neuro-symbolic generative art.
As a preliminary study, we train a generative deep neural network on samples from the symbolic approach.
We demonstrate through human studies that subjects find the final artifacts and the creation process using our neuro-symbolic approach to be more creative than the symbolic approach 61% and 82% of the time respectively.
- Score: 47.68552532886138
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: There are two classes of generative art approaches: neural, where a deep
model is trained to generate samples from a data distribution, and symbolic or
algorithmic, where an artist designs the primary parameters and an autonomous
system generates samples within these constraints. In this work, we propose a
new hybrid genre: neuro-symbolic generative art. As a preliminary study, we
train a generative deep neural network on samples from the symbolic approach.
We demonstrate through human studies that subjects find the final artifacts and
the creation process using our neuro-symbolic approach to be more creative than
the symbolic approach 61% and 82% of the time respectively.
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