Keep The Essentials: Efficient Reference Conditioned Generation via Token Dropping
2026-06-22 • Computer Vision and Pattern Recognition
Computer Vision and Pattern Recognition
AI summaryⓘ
The authors study a type of image generation model that uses other images as references to create new pictures based on a text prompt. These models are slow because they process many pieces (tokens) of the reference images. They found that keeping only a small, important subset of these tokens can speed up the generation a lot without losing quality. To make this work better, they retrain the model to handle missing tokens and then selectively keep the most useful parts during generation. Their method makes the model much faster while keeping the images looking good.
diffusion modelsreference-based generationtokensmodel fine-tuninginference speedtoken droppingimage synthesisprompt-driven generationvisual qualitymulti-reference generation
Authors
Rishubh Parihar, Ayush Raina, R. Venkatesh Babu, Or Patashnik
Abstract
Reference-based diffusion models enable highly controllable image generation by leveraging elements from input images to guide prompt-driven synthesis. However, these models are computationally expensive in runtime, and their cost scales severely with the number of input references. While the efficiency of diffusion models has been extensively studied in the context of prompt-driven generation, it remains largely under-explored in the realm of reference-based models. This setting presents unique challenges not addressed by methods focusing solely on generation. In particular, the wasteful representation of references as dense token grids offers significant opportunities for improvement. In this work, we present Sparse Context, a method for constructing sparse reference representations by retaining only a reduced subset of reference tokens. We observe that even without modifying the model, dropping a significant portion of reference tokens at inference time largely preserves its generation capabilities. To fully realize this potential, we fine-tune the model with random token dropping at varying ratios, encouraging robustness to partial reference representations. Crucially, this training strategy decouples the model from any specific token selection rule, allowing flexible control at inference time. At inference time, instead of random dropping, we apply task-aware token selection strategies that prioritize the most informative regions of the reference images, adapting the token budget to the input and task requirements. Extensive experiments show our method achieves a 4x increase in inference speed for multi-reference generation and an 2x for single reference generation. Importantly, this efficiency is achieved without compromising visual quality across both spatially-aligned editing and subject-driven generation.