Blind Image Denoising and Inpainting Using Robust Hadamard Autoencoders

01/26/2021
by   Rasika Karkare, et al.
6

In this paper, we demonstrate how deep autoencoders can be generalized to the case of inpainting and denoising, even when no clean training data is available. In particular, we show how neural networks can be trained to perform all of these tasks simultaneously. While, deep autoencoders implemented by way of neural networks have demonstrated potential for denoising and anomaly detection, standard autoencoders have the drawback that they require access to clean data for training. However, recent work in Robust Deep Autoencoders (RDAEs) shows how autoencoders can be trained to eliminate outliers and noise in a dataset without access to any clean training data. Inspired by this work, we extend RDAEs to the case where data are not only noisy and have outliers, but also only partially observed. Moreover, the dataset we train the neural network on has the properties that all entries have noise, some entries are corrupted by large mistakes, and many entries are not even known. Given such an algorithm, many standard tasks, such as denoising, image inpainting, and unobserved entry imputation can all be accomplished simultaneously within the same framework. Herein we demonstrate these techniques on standard machine learning tasks, such as image inpainting and denoising for the MNIST and CIFAR10 datasets. However, these approaches are not only applicable to image processing problems, but also have wide ranging impacts on datasets arising from real-world problems, such as manufacturing and network processing, where noisy, partially observed data naturally arise.

READ FULL TEXT

page 1

page 6

page 7

page 8

page 9

page 10

research
04/28/2019

An approach to image denoising using manifold approximation without clean images

Image restoration has been an extensively researched topic in numerous f...
research
06/16/2020

Noise2Inpaint: Learning Referenceless Denoising by Inpainting Unrolling

Deep learning based image denoising methods have been recently popular d...
research
06/01/2019

Natural Image Noise Dataset

Convolutional neural networks have been the focus of research aiming to ...
research
08/25/2020

Efficient Blind-Spot Neural Network Architecture for Image Denoising

Image denoising is an essential tool in computational photography. Stand...
research
06/06/2014

Analyzing noise in autoencoders and deep networks

Autoencoders have emerged as a useful framework for unsupervised learnin...
research
01/23/2019

Interpolation and Denoising of Seismic Data using Convolutional Neural Networks

Seismic data processing algorithms greatly benefit, or even require regu...
research
03/06/2023

Robust Autoencoders for Collective Corruption Removal

Robust PCA is a standard tool for learning a linear subspace in the pres...

Please sign up or login with your details

Forgot password? Click here to reset