Efficient Noise Removing based Optimized Smart Dynamic Gaussian Filter
نویسندگان
چکیده
Gaussian filter has been used extensively in signal image processing for many years. Gaussian or Gaussian derivative filtering is in several ways optimal for applications requiring low-pass filters or running averages. In this paper, a highly efficient noise removing technique based on a modified dynamic Gaussian filter is introduced. Called smooth filter, the Gaussian filter is known to be more efficient for conserving details and slight borders then other filters. In the proposed approach, we developed a variable shape low pass filter that can be used for efficient noise removal even with impulsive noise. In this study, the filter selects automatically the processed windows based on an automatic noise targeting in such a way that the image does not lose its characteristics. An optimal magnitude and support extent of the Gaussian filters is continually computed in an iterative method for each selected windows of the image. This approach is approved experimentally using salt and pepper noise. In fact Gaussian filter is not appropriate for removal of impulsive (salt and pepper) noise that needs filters based on statistical approach. Nevertheless high efficiency in removing high densities of noise difficult to remove even using median filter is shown. In addition the image quality is preserved. This proposed method combines the behavior of an intelligent dynamic low-pass filter that eliminates only high frequencies corresponding to noise and a filter based statistical approach such as median filter that removes efficiently impulsive noise and conserves details.
منابع مشابه
Improved Adaptive Median Filter Algorithm for Removing Impulse Noise from Grayscale Images
Digital image is often degraded by many kinds of noise during the process of acquisition and transmission. To make subsequent processing more convenient, it is necessary to decrease the effect of noise. There are many kinds of noises in image, which mainly include salt and pepper noise and Gaussian noise. This paper focuses on median filters to remove the salt and pepper noise. After summarizin...
متن کاملRemoving Mixture of Gaussian and Impulse Noise by Patch-Based Weighted Means
We first establish a law of large numbers and a convergence theorem in distribution to show the rate of convergence of the non-local means filter for removing Gaussian noise. We then introduce the notion of degree of similarity to measure the role of similarity for the non-local means filter. Based on the convergence theorems, we propose a patch-based weighted means filter for removing impulse ...
متن کاملFractional Masks Based On Generalized Fractional Differential Operator for Image Denoising
This paper introduces an image denoising algorithm based on generalized Srivastava-Owa fractional differential operator for removing Gaussian noise in digital images. The structures of n n× fractional masks are constructed by this algorithm. Experiments show that, the capability of the denoising algorithm by fractional differential-based approach appears efficient to smooth the Gaussian noisy i...
متن کاملAn Enhanced Median Filter for Removing Noise from MR Images
In this paper, a novel decision based median (DBM) filter for enhancing MR images has been proposed. The method is based on eliminating impulse noise from MR images. A median-based method to remove impulse noise from digital MR images has been developed. Each pixel is leveled from black to white like gray-level. The method is adjusted in order to decide whether the median operation can be appli...
متن کاملA Two Stage Dynamic Trilateral Filter Removing Impulse plus Gaussian Noise
Noise detection and Image restoration is a Universal research phenomena. There are number of existing techniques in terms of Noise Filters. Two of them are Trilateral filter proposed by Garnett, Huegerich and Chui [13] , and Dong, Raymond H. Chan, and Shufang Xu [17] are based on two types of Noise Model additive Gaussian noise and impulse noise, and there combination called mixed noise. Garnet...
متن کامل