Edge-SD-SR: Low Latency and Parameter Efficient On-device Super-Resolution with Stable Diffusion via Bidirectional Conditioning
Mehdi Noroozi, Isma Hadji, Victor Escorcia, Anestis Zaganidis, Brais, Martinez, Georgios Tzimiropoulos

TL;DR
Edge-SD-SR is a novel, low-latency, parameter-efficient diffusion model designed for high-quality image super-resolution on resource-constrained devices, employing innovative training strategies and bidirectional conditioning.
Contribution
The paper introduces Edge-SD-SR, the first low-latency, parameter-efficient diffusion model for super-resolution, with novel training techniques and bidirectional conditioning tailored for on-device deployment.
Findings
Runs efficiently on mobile devices, upscaling images in milliseconds.
Matches or outperforms state-of-the-art super-resolution methods.
Uses only ~169M parameters with low computational complexity.
Abstract
There has been immense progress recently in the visual quality of Stable Diffusion-based Super Resolution (SD-SR). However, deploying large diffusion models on computationally restricted devices such as mobile phones remains impractical due to the large model size and high latency. This is compounded for SR as it often operates at high res (e.g. 4Kx3K). In this work, we introduce Edge-SD-SR, the first parameter efficient and low latency diffusion model for image super-resolution. Edge-SD-SR consists of ~169M parameters, including UNet, encoder and decoder, and has a complexity of only ~142 GFLOPs. To maintain a high visual quality on such low compute budget, we introduce a number of training strategies: (i) A novel conditioning mechanism on the low resolution input, coined bidirectional conditioning, which tailors the SD model for the SR task. (ii) Joint training of the UNet and…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Sparse and Compressive Sensing Techniques · Image Processing Techniques and Applications
MethodsDiffusion
