Abstracto

Image Denoising Techniques Using Wavelets

S.Y.Pattar,

The focus of this work is to develop performance-enhancing algorithm for denoising the signal by using wavelet transformation. The earlier methods used for denoising were based on FFT, where signal is transformed in to frequency domain and soft and hard threshold has been carried out for denoising. After comparing the performances, it has been seen if temporal characteristics of signal can be preserved, it would give better result .Thus, wavelet based denoising came into picture where transformation results in perseverance of frequency and temporal characteristics of the signal. In wavelet based denoising, while applying threshold techniques few signals are also lost. If the lost signal can be retrieved using signal statistical properties, it would give better result in terms of SNR. We tried to recover the lost signal in details part Importance of denoising comes when we talk about images, which play an important role in daily life application. Different techniques have been used for denoising of image, but these lose some of the image characteristics. We modified the existing stochastic algorithm to make it more adaptive. The results for Lena image are presented to establish the advantages that our modified stochastic algorithm provides over other techniques.

Descargo de responsabilidad: este resumen se tradujo utilizando herramientas de inteligencia artificial y aún no ha sido revisado ni verificado.

Indexado en

Academic Keys
ResearchBible
CiteFactor
Cosmos SI
Búsqueda de referencia
Universidad Hamdard
Catálogo mundial de revistas científicas
director académico
Factor de impacto de revistas innovadoras internacionales (IIJIF)
Instituto Internacional de Investigación Organizada (I2OR)
Cosmos

Ver más