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SFDDM: Single-fold Distillation for Diffusion models

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arxiv 2405.14961 v1 pith:4TCW3G4O submitted 2024-05-23 cs.CV cs.LG

SFDDM: Single-fold Distillation for Diffusion models

classification cs.CV cs.LG
keywords modeldiffusiondistillationsfddmstudentinferencemodelssingle-fold
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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While diffusion models effectively generate remarkable synthetic images, a key limitation is the inference inefficiency, requiring numerous sampling steps. To accelerate inference and maintain high-quality synthesis, teacher-student distillation is applied to compress the diffusion models in a progressive and binary manner by retraining, e.g., reducing the 1024-step model to a 128-step model in 3 folds. In this paper, we propose a single-fold distillation algorithm, SFDDM, which can flexibly compress the teacher diffusion model into a student model of any desired step, based on reparameterization of the intermediate inputs from the teacher model. To train the student diffusion, we minimize not only the output distance but also the distribution of the hidden variables between the teacher and student model. Extensive experiments on four datasets demonstrate that our student model trained by the proposed SFDDM is able to sample high-quality data with steps reduced to as little as approximately 1%, thus, trading off inference time. Our remarkable performance highlights that SFDDM effectively transfers knowledge in single-fold distillation, achieving semantic consistency and meaningful image interpolation.

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