You are here: Artificial Intelligence > Deep Learning > Training Deep Models for Denoising

Training Deep Models for Denoising

Image denoising, in which a noisy image is the input and an image with noise reduced is the output, has always been a central challenge in image processing. Although traditional techniques cannot fully recover noised out pixels of the source image, Dragonfly's Deep Learning approach can accurately distinguish between real image detail and noise. This allows you to remove noise while actually recovering image detail.

Original image (left) and denoised with Noise2Noise_SRResNet model (right)

Denoised image

Acknowledgments: Sample courtesy of Dr Xuejun Sun, University of Alberta, Cross Cancer Institute. Imaged by Rachan Parwani on a ZEISS GeminiSEM 300.

 

Dragonfly Help Live Version