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SeqLoRA: Bilevel Orthogonal Adaptation for Continual Multi-Concept Generation

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Parameter-efficient fine-tuning enables fast personalization of text-to-image diffusion models, but composing multiple custom concepts remains challenging due to representation interference. Existing modular methods either rely on expensive post-hoc fusion or freeze adaptation subspaces, which limit expressiveness and concept fidelity. To address this trade-off, we propose Sequential regularized LoRA (SeqLoRA), a constrained continual learning framework that jointly optimizes both LoRA factors via bilevel optimization. Theoretically, we establish strong convergence guarantees for our algorithm and model the residual layer activations as a matrix sub-Gaussian process to derive high-probability bounds on catastrophic forgetting. We further prove that learning the LoRA basis from data minimizes residual interference energy more effectively than frozen-basis methods. Experiments on multi-concept image generation demonstrate that SeqLoRA improves identity preservation and scalability across up to 101 concepts, while avoiding costly fusion and reducing attribute interference in composed generations.

Javad Parsa, Enis Simsar, Amir Joudaki, Thomas Hofmann, Andr\'e M. H. Teixeira• 2026

Related benchmarks

TaskDatasetResultRank
Text-to-Image PersonalizationConcepts dataset
CLIP-I Score0.715
14
Multi-concept Generation32 concepts
DINO0.468
5
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