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denoisingNetwork

Get image denoising network

Syntax

net = denoisingNetwork(modelName)

Description

example

net = denoisingNetwork(modelName) returns a pretrained image denoising deep neural network specified by modelName.

This function requires that you have Neural Network Toolbox™.

Examples

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Get the pretrained image denoising convolutional neural network, 'DnCNN'.

net = denoisingNetwork('DnCNN')
net = 
  SeriesNetwork with properties:

    Layers: [59×1 nnet.cnn.layer.Layer]

See denoiseImage for an example of how to denoise an image using the pretrained network.

Input Arguments

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Name of pretrained denoising deep neural network, specified as the character vector 'DnCnn'. This is the only pretrained denoising network currently available, and it is trained for grayscale images only.

Data Types: char | string

Output Arguments

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Pretrained denoising deep neural network, returned as a SeriesNetwork object.

References

[1] Zhang, K., W. Zuo, Y. Chen, D. Meng, and L. Zhang. "Beyond a Gaussian Denoiser: Residual Learning of Deep CNN for Image Denoising." IEEE Transactions on Image Processing. Vol. 26, Number 7, Feb. 2017, pp. 3142-3155.

Introduced in R2017b

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