Paper ID: 2503.22015 • Published Mar 27, 2025
DeCompress: Denoising via Neural Compression
Ali Zafari, Xi Chen, Shirin Jalali
Rutgers University
TL;DR
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Learning-based denoising algorithms achieve state-of-the-art performance
across various denoising tasks. However, training such models relies on access
to large training datasets consisting of clean and noisy image pairs. On the
other hand, in many imaging applications, such as microscopy, collecting ground
truth images is often infeasible. To address this challenge, researchers have
recently developed algorithms that can be trained without requiring access to
ground truth data. However, training such models remains computationally
challenging and still requires access to large noisy training samples. In this
work, inspired by compression-based denoising and recent advances in neural
compression, we propose a new compression-based denoising algorithm, which we
name DeCompress, that i) does not require access to ground truth images, ii)
does not require access to large training dataset - only a single noisy image
is sufficient, iii) is robust to overfitting, and iv) achieves superior
performance compared with zero-shot or unsupervised learning-based denoisers.
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