CVMar 30

DreamLite: A Lightweight On-Device Unified Model for Image Generation and Editing

arXiv:2603.2871398.32 citationsh-index: 13
Predicted impact top 5% in CV · last 90 daysOriginality Highly original
AI Analysis

This addresses the need for efficient, on-device AI models for mobile applications, offering a novel solution that combines generation and editing in a single compact network.

The paper tackles the problem of high latency and deployment challenges in diffusion models by proposing DreamLite, a lightweight on-device unified model (0.39B parameters) for image generation and editing, achieving GenEval 0.72 and ImgEdit 4.11 scores and processing images in under 1 second on a smartphone.

Diffusion models have made significant progress in both text-to-image (T2I) generation and text-guided image editing. However, these models are typically built with billions of parameters, leading to high latency and increased deployment challenges. While on-device diffusion models improve efficiency, they largely focus on T2I generation and lack support for image editing. In this paper, we propose DreamLite, a compact unified on-device diffusion model (0.39B) that supports both T2I generation and text-guided image editing within a single network. DreamLite is built on a pruned mobile U-Net backbone and unifies conditioning through in-context spatial concatenation in the latent space. It concatenates images horizontally as input, using a (target | blank) configuration for generation tasks and (target | source) for editing tasks. To stabilize the training of this compact model, we introduce a task-progressive joint pretraining strategy that sequentially targets T2I, editing, and joint tasks. After high-quality SFT and reinforcement learning, DreamLite achieves GenEval (0.72) for image generation and ImgEdit (4.11) for image editing, outperforming existing on-device models and remaining competitive with several server-side models. By employing step distillation, we further reduce denoising processing to just 4 steps, enabling our DreamLite could generate or edit a 1024 x 1024 image in less than 1s on a Xiaomi 14 smartphone. To the best of our knowledge, DreamLite is the first unified on-device diffusion model that supports both image generation and image editing.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes