Neural network learning approach for color image restoration has been discussed in this paper and one of the possible solutions for restoring images has been presented. Here neural network weights are considered as regularization parameter values instead of explicitly specifying them. The weights are modified during the training through the supply of training set data. The desired response of the network is in the form of estimated value of the current pixel. This estimated value is used to modify the network weights such that the restored value produced by the network for a pixel is as close as to this desired response. One of the advantages of the proposed approach is that, once the neural network is trained, images can be restored withou...
Image restoration is known as enhancement and recovery of images. Personal pictures captured by vari...
Colorization is of great importance in restoring old gray pictures and making them more vivid. Thank...
When using a regularized approach for image restoration there is always a compromise between image s...
Abstract-As we know pixels are lost in colored images due to misfocus of devices, damaged devices, e...
This work aims to define and experimentally evaluate an adaptive strategy based on neural learning t...
. We present a neural network that can be applied to image correction in a preprocessing unit. Blur,...
Today optical measuring devices are used in many applications. The measurement accuracy should be ve...
Image restoration is a process that restores a degraded image to its original or near original form....
In the thesis, we have implemented different neural network approaches to solve image restoration an...
This work aims to define and experimentally evaluate an iterative strategy based on neural learning ...
In this paper a new neural network model is used for recognition of color images which speeds up ima...
Image restoration using deep learning attempts to create an image recovery system that can restore o...
This work aims to define and experimentally evaluate an iterative strategy based on neural learning ...
When using a regularized approach for image restoration there is always a compromise between image s...
This thesis deals with image colorization and image super-resolution using neural networks. It brief...
Image restoration is known as enhancement and recovery of images. Personal pictures captured by vari...
Colorization is of great importance in restoring old gray pictures and making them more vivid. Thank...
When using a regularized approach for image restoration there is always a compromise between image s...
Abstract-As we know pixels are lost in colored images due to misfocus of devices, damaged devices, e...
This work aims to define and experimentally evaluate an adaptive strategy based on neural learning t...
. We present a neural network that can be applied to image correction in a preprocessing unit. Blur,...
Today optical measuring devices are used in many applications. The measurement accuracy should be ve...
Image restoration is a process that restores a degraded image to its original or near original form....
In the thesis, we have implemented different neural network approaches to solve image restoration an...
This work aims to define and experimentally evaluate an iterative strategy based on neural learning ...
In this paper a new neural network model is used for recognition of color images which speeds up ima...
Image restoration using deep learning attempts to create an image recovery system that can restore o...
This work aims to define and experimentally evaluate an iterative strategy based on neural learning ...
When using a regularized approach for image restoration there is always a compromise between image s...
This thesis deals with image colorization and image super-resolution using neural networks. It brief...
Image restoration is known as enhancement and recovery of images. Personal pictures captured by vari...
Colorization is of great importance in restoring old gray pictures and making them more vivid. Thank...
When using a regularized approach for image restoration there is always a compromise between image s...