Development of Neural Networks for Noise Reduction

Development of Neural Networks for Noise Reduction

Lubna Badri
Faculty of Engineering, Philadelphia University, Jordan


Abstract: This paper describes the development of neural network models for noise reduction. The networks used to enhance the performance of modeling captured signals by reducing the effect of noise. Both recurrent and multi-layer Backpropagation neural networks models are examined and compared with different training algorithms. The paper presented is  to illustrate the effect of training algorithms and  network architecture on neural network performance for a given application.

Keywords: Noise reduction, recurrent neural networks, multi-layer backpropagation.

Received January 3, 2009; accepted February 25, 2009

Full Text
Read 2872 times Last modified on Monday, 21 June 2010 02:37
Share
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…