crea.blender: A Neural Network-Based Image Generation Game to Assess Creativity
August 13, 2020 Β· Declared Dead Β· π ACM SIGCHI Annual Symposium on Computer-Human Interaction in Play
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Authors
Janet Rafner, Arthur Hjorth, Sebastian Risi, Lotte Philipsen, Charles Dumas, Michael Mose Biskjær, Lior Noy, Kristian Tylén, Carsten Bergenholtz, Jesse Lynch, Blanka Zana, Jacob Sherson
arXiv ID
2008.05914
Category
cs.HC: Human-Computer Interaction
Citations
19
Venue
ACM SIGCHI Annual Symposium on Computer-Human Interaction in Play
Last Checked
4 months ago
Abstract
We present a pilot study on crea.blender, a novel co-creative game designed for large-scale, systematic assessment of distinct constructs of human creativity. Co-creative systems are systems in which humans and computers (often with Machine Learning) collaborate on a creative task. This human-computer collaboration raises questions about the relevance and level of human creativity and involvement in the process. We expand on, and explore aspects of these questions in this pilot study. We observe participants play through three different play modes in crea.blender, each aligned with established creativity assessment methods. In these modes, players "blend" existing images into new images under varying constraints. Our study indicates that crea.blender provides a playful experience, affords players a sense of control over the interface, and elicits different types of player behavior, supporting further study of the tool for use in a scalable, playful, creativity assessment.
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