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arxiv 2506.01955 v1 pith:66ASLZTC submitted 2025-06-02 cs.CV cs.CLcs.LG

Dual-Process Image Generation

classification cs.CV cs.CLcs.LG
keywords imagetasksdual-processcontrolgenerationlearnschemevlms
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Prior methods for controlling image generation are limited in their ability to be taught new tasks. In contrast, vision-language models, or VLMs, can learn tasks in-context and produce the correct outputs for a given input. We propose a dual-process distillation scheme that allows feed-forward image generators to learn new tasks from deliberative VLMs. Our scheme uses a VLM to rate the generated images and backpropagates this gradient to update the weights of the image generator. Our general framework enables a wide variety of new control tasks through the same text-and-image based interface. We showcase a handful of applications of this technique for different types of control signals, such as commonsense inferences and visual prompts. With our method, users can implement multimodal controls for properties such as color palette, line weight, horizon position, and relative depth within a matter of minutes. Project page: https://dual-process.github.io.

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Cited by 2 Pith papers

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  1. Selective Timestep Weighting and Advantage-Based Replay for Sample-Efficient Diffusion RLHF

    cs.LG 2026-07 conditional novelty 5.0

    Two plug-and-play strategies — per-timestep advantage weighting and advantage-based trajectory replay — improve diffusion RLHF sample efficiency up to 6× across five reward functions.

  2. Composing People Together: Iterative Pose-Image Generation for Multi-Person Interaction Scenes

    cs.CV 2026-05 unverdicted novelty 5.0

    Introduces dual pose-image representation, cross-modal alignment, and iterative construction to improve prompt alignment and diversity in multi-person text-to-image generation.