Feb. 14, 2024, 5:43 a.m. | Antonia W\"ust Wolfgang Stammer Quentin Delfosse Devendra Singh Dhami Kristian Kersting

cs.LG updates on arXiv.org arxiv.org

The challenge in learning abstract concepts from images in an unsupervised fashion lies in the required integration of visual perception and generalizable relational reasoning. Moreover, the unsupervised nature of this task makes it necessary for human users to be able to understand a model's learnt concepts and potentially revise false behaviours. To tackle both the generalizability and interpretability constraints of visual concept learning, we propose Pix2Code, a framework that extends program synthesis to visual relational reasoning by utilizing the abilities …

abstract challenge concepts cs.ai cs.cv cs.lg false fashion human images integration lies nature perception reasoning relational unsupervised visual visual concepts

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