Intrinsic Concept Extraction Based on Compositional Interpretability
arXiv cs.CV / 3/13/2026
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Key Points
- The paper introduces CI-ICE, a new task that uses diffusion-based text-to-image models to extract composable object-level and attribute-level concepts from a single image, enabling reconstruction of the original concept through concept combinations.
- HyperExpress is proposed to tackle CI-ICE with two core components: (1) a hyperbolic-space concept learning approach to achieve disentanglement while preserving hierarchical relationships, and (2) a concept-wise optimization method that maps embeddings to maintain complex inter-concept relationships and composability.
- The method demonstrates outstanding performance in extracting compositionally interpretable intrinsic concepts from a single image, advancing unsupervised concept extraction and interpretability in vision-language models.
- The work has potential implications for improved explainability and controllable image generation, influencing how downstream AI systems reason about object and attribute concepts.
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