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  4. PartComposer: Learning and Composing Part-Level Concepts from Single-Image Examples
 
conference paper

PartComposer: Learning and Composing Part-Level Concepts from Single-Image Examples

Liu, Junyu  
•
Jones, R. Kenny
•
Ritchie, Daniel
December 14, 2025
Proceedings of the SIGGRAPH Asia 2025 Conference Papers
SA Conference Papers '25 SIGGRAPH Asia 2025 Conference Papers

We present PartComposer: a framework for part-level concept learning from single-image examples that enables text-to-image diffusion models to compose novel objects from meaningful components. Existing methods either struggle with effectively learning fine-grained concepts or require a large dataset as input. We propose a dynamic data synthesis pipeline generating diverse part compositions to address one-shot data scarcity. Most importantly, we propose to maximize the mutual information between denoised latents and structured concept codes via a concept predictor, enabling direct regulation on concept disentanglement and re-composition supervision. Our method achieves strong disentanglement and controllable composition, outperforming subject and part-level baselines when mixing concepts from the same, or different, object categories.

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