A Review of Image Enhancement Technique Based on Wavelet Threshold and Neural Network

نویسندگان

  • SHOBHIT VERMA
  • HITESH GUPTA
چکیده

Image enhancement plays an important role in computer vision. The degraded image, blurred image and noised image effect the medical diagnosis of image data, satellite image for information retrieval. Various authors and researcher propose a method of image enhancement such as histogram equalization, multi-point histogram equalisation and some method based on neural network and wavelet threshold. Wavelet is very important transform function for image enhancement. Wavelet transform function decomposed layer wise one layer is called details layer and another layer is called approximation layer. The details layer acts as threshold function and approximate layer is processing of image enhancement. For the processing of neural network used approximate layer data. The use of neural network in image enhancement gives a better performance in compression of all conventional enhancement technique. In this paper we discuss the image en enhancement based on neural network and wavelet transform function processing.

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تاریخ انتشار 2013