• Author/Authors

    SAĞIROĞLU, Şeref Gazi Üniversitesi - Engineering Faculty - Computer Engineering Department, Turkey , BEŞDOK, Erkan Erciyes University - Engineering Faculty - Geodesy Photogrammetry, Engineering Department, Turkey

  • Title Of Article

    A Novel Approach for Image Denoising Based on Artificial Neural Networks

  • شماره ركورد
    15755
  • Abstract
    This study presents a novel approach based on artificial neural networks (ANNs) to remove noises from defected images. ANNs were trained with two different learning algorithms, Levenberg-Marquardt and Extended-Delta-Bar-Delta, for speeding up the training and feedforward calculation processes. The restored results were also compared to the classical techniques, FFT, Wiener+Median filtering and wavelet denoising. The results were shown that the proposed novel neural model provides simplicity and accuracy to remove noises from defected images without estimating any mathematical model than the others.
  • From Page
    71
  • NaturalLanguageKeyword
    Image Restoration , Wavelet , Wiener , Median , FFT , Artificial neural networks
  • JournalTitle
    Journal Of Polytechnic
  • To Page
    86
  • JournalTitle
    Journal Of Polytechnic