图像去噪 英文文献及翻译(10页).doc
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1、-图像去噪 英文文献及翻译-第 页New Method for Image Denoising while Keeping Edge InformationEdge information is the most important high- frequency information of an image, so we should try to maintain more edge information while denoising. In order to preserve image details as well as canceling image noise, we pr
2、esent a new image denoising method: image denoising based on edge detection. Before denoising, images edges are first detected, and then the noised image is divided into two parts: edge part and smooth part. We can therefore set high denoising threshold to smooth part of the image and low denoising
3、threshold to edge part. The theoretical analyses and experimental results presented in this paper show that, compared to commonly-used wavelet threshold denoising methods, the proposed algorithm could not only keep edge information of an image, but also could improve signal-to-noise ratio of the den
4、oised image.In the wavelet domain, the denoising algorithm based on the threshold filter is widely used, because its comparatively efficient and easy to realize. We can select a threshold according to the characteristic of the image, modifying all of the discrete detail coefficients so as to reduce
5、the noise. However, we are in the dilemma of determining the level of the threshold. The higher the threshold is, the better effect of denoising will be, and, at the same time, the blurrier the edge will be.The edges of an image mostly reflect the information of the image, and contain its basic char
6、acter. According to research on human eyes, the characteristic of the edges is one of several characteristics that can strongly impress the visual system . Thus, when we process denoising, the first thing that we should care about is trying to retain edge information.This paper presents a new method
7、 for image denoising while keeping edge information. We first apply wavelet transform to a noised image, and then process edge detection. The wavelet coefficients are divided into two parts: edge part and smooth part. We can therefore set high denoising threshold to the smooth part and low denoising
8、 threshold to edge part in order to retain more edge information. The theoretic analysis and experimental results presented in this paper shows that, compared with commonly-used wavelet threshold denoising methods, the proposed denoising method is more effective. The idea of combining edge detection
9、 with denoising is doable.The rest of this paper is organized as follows. We present the proposed denoising method in Section 2. Experimental results to demonstrate the performance of the proposed method are given in Section 3 , and conclusions and comments are given in Section 4.This paper discusse
10、s how to remove the additive white Gaussian noise (AWGN) with a zero mean. For other kinds of noise modeling, the idea of this paper is also applicable.The denoising method we present needs to detect the images edges before denoising, so as to protect the images edge information from damage in the f
11、ollowing denoising process. In our method, finding out the precise location of the edges is pivotal. Many classical edge detectors are already available. Edges can be determined from the image by processing directly in the spatial domain or by transformation to a different domain. In the spatial dom
12、ain, there are Sobel edge operators, Prewitt edge operators, Kirsch edge operators, and so on. In the transforming field, wavelet transformation is adapted to the wildly-changed edges better than with the normal Fourier transformation. Wavelet transformation, which is called the “mathematical micros
13、cope,” has a resolution in both the time field and the frequency field. It can focus onto any detail of the analyzed object by taking more and more fine steps of the space field. owing to these characteristics, wavelet transform is very suitable for use in edge detection. In this part we present an
14、image edge detection method based on wavelet transformation.When images are corrupted by AWGN, due to noise, some pixels of the homogeneous regions may also have a local maximum of the gradient modulus, so we should distinguish the coefficients corresponding to noise from those corresponding to the
15、potential edges. We know that the Lipschitz exponent values of AWGN are always negative, so the value of its corresponding local maximum of the gradient modulus will diminish at higher scales. This is different from the edges of the image, which always have positive Lipschitz exponent values. As a r
16、esult, we can wipe off some coefficients corresponding to noise by using these different attributions. Furthermore, we can connect the remaining coefficients along the edge orientation, which is vertical to the gradient direction. Those that cannot be connected will be considered as coefficients cor
17、responding to noise, and then will be wiped off.In practice, we should pay attention to the following:The length of the filter used in DWT should not be too long; otherwise, it will affect the effect of edge detection.The boundary should be treated properly. In our experiment, we use a mirror-symmet
18、rical extension.The edge detecting procedure is composed of the following stages:1.apply pretreatment to the image, using the average filter and denoting the resulting image f (x, y)。2. apply the redundant wavelet transformation to each row 3. Find the local maximum coefficients of every row. Record
19、 these coefficients f (x, y).4. Remove the coefficients with low Lipschitz exponent values from the recorded coefficients, because they correspond to noise. Thus, we can get the coefficients corresponding to the potential edges of each rowat different scales.5. Applying stage 1,2,3, and 4 to every c
20、olumn, we can get the coefficients corresponding to the potential edges of each column at different scales.6. Note that the wavelet coefficients in fact correspond to the gradient of the smoothed version off at the scale. The edge magnitudes and orientation can be calculated from the image gradient
21、as follows:7. Join the recorded coefficients of similar edge magnitudes along the edge orientation in a chain. Those isolated coefficients are wiped off. When the length of the chain reaches the threshold T, the pixels corresponding to the wavelet coefficients in the chain are considered to be edge
22、pixels.We applied our edge detecting technique to a 256*256 Lena image corrupted by AWGN. A Lena image is an image with relatively complex edges. It is difficult for normal edge detection to completely detect the different types of edges. With a noise-corrupted Lena image, the edge detection task is
23、 even more difficult. The method we present uses the advantages of wavelet transformation, which can focus onto any detail of the analyzed object by taking more and more fine steps of the space field. At the low scale, many details of the edges, such as the girls pupils, are detected; at a high scal
24、e, smooth longer edges, such as the pole on the left, are seen. The experimental results shown prove that our edge detecting method is effective.After wavelet transformation, most energy of signal is supposed to be clustered in a few wavelet coefficients, whereas noises are not. The thresholding, or
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