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ResDNN: deep residual learning for natural image denoising

Gurprem Singh, Ajay Mittal, Naveen Aggarwal

2020IET Image Processing34 citationsDOIOpen Access PDF

Abstract

Image denoising is a thoroughly studied research problem in the areas of image processing and computer vision. In this work, a deep convolution neural network with added benefits of residual learning for image denoising is proposed. The network is composed of convolution layers and ResNet blocks along with rectified linear unit activation functions. The network is capable of learning end‐to‐end mappings from noise distorted images to restored cleaner versions. The deeper networks tend to be challenging to train and often are posed with the problem of vanishing gradients. The residual learning and orthogonal kernel initialisation keep the gradients in check. The skip connections in the ResNet blocks pass on the learned abstractions further down the network in the forward pass, thus achieving better results. With a single model, one can tackle different levels of Gaussian noise efficiently. The experiments conducted on the benchmark datasets prove that the proposed model obtains a significant improvement in structural similarity index than the previously existing state‐of‐the‐art techniques.

Topics & Concepts

ResidualArtificial intelligenceImage denoisingComputer scienceNoise reductionDeep learningNatural (archaeology)Pattern recognition (psychology)Image (mathematics)Computer visionAlgorithmGeologyPaleontologyImage and Signal Denoising MethodsAdvanced Image Fusion TechniquesAdvanced Image Processing Techniques
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