Litcius/Paper detail

Zero-Shot Noise2Noise: Efficient Image Denoising without any Data

Youssef Mansour, Reinhard Heckel

2023146 citationsDOI

Abstract

Recently, self-supervised neural networks have shown excellent image denoising performance. How-ever, current dataset free methods are either computationally expensive, require a noise model, or have inad-equate image quality. In this work we show that a simple 2-layer network, without any training data or knowledge of the noise distribution, can enable high-quality image denoising at low computational cost. Our approach is motivated by Noise2Noise and Neighbor2Neighbor and works well for denoising pixel-wise independent noise. Our experiments on artificial, real-world cam-era, and microscope noise show that our method termed ZS-N2N (Zero Shot Noise2Noise) often outperforms ex-isting dataset-free methods at a reduced cost, making it suitable for use cases with scarce data availability and limited compute.

Topics & Concepts

Noise reductionComputer scienceNoise (video)Artificial intelligencePixelShot noiseArtificial neural networkImage qualityVideo denoisingPattern recognition (psychology)Image (mathematics)Image noiseComputer visionVideo processingTelecommunicationsDetectorMultiview Video CodingVideo trackingImage and Signal Denoising MethodsImage Processing Techniques and ApplicationsPhotoacoustic and Ultrasonic Imaging