Dataset Viewer

The dataset viewer is not available because its heuristics could not detect any supported data files. You can try uploading some data files, or configuring the data files location manually.

Diffusion-Based Image Compression with Zero-Cost Encoders

This repository contains model checkpoints for the paper: "Classical Transformations as Zero-Cost Encoders for Diffusion-Based Image Compression: A Study with Gaussian Blur" (Submitted to BMVC 2026)

Checkpoints

We release the σ=1 checkpoint for each domain — the practical operating point achieving 20-28% compression with strong perceptual quality across all domains.

Domain File PSNR LPIPS Compression
MURA X-ray xray_sigma1/cond_step_600000.pt 48.81 dB 0.006 26.5%
BraTS MRI brats_sigma1/cond_step_600000.pt 49.20 dB 0.002 28.3%
CelebA celeba_sigma1/cond_step_582000.pt 42.01 dB 0.004 20.3%
Buildings buildings_sigma1/cond_step_600000.pt 38.50 dB 0.007 23.7%

Usage

Evaluation scripts are provided in the supplementary material of the paper. To run inference on a single image:

KMP_DUPLICATE_LIB_OK=TRUE python eval_single.py /path/to/image.png

The script auto-detects the dataset from the path and uses the appropriate checkpoint.

Datasets

Requirements

torch
torchvision
Pillow
numpy
scikit-image
lpips
Downloads last month
40