AU2001294453A1 - Noise reduction in images, by adding a pixel to a region (R), adding surrounding pixel pairs to the region if they fulfil a condition and determine a mean value for the region - Google Patents

Noise reduction in images, by adding a pixel to a region (R), adding surrounding pixel pairs to the region if they fulfil a condition and determine a mean value for the region

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AU2001294453A1
AU2001294453A1 AU2001294453A AU2001294453A AU2001294453A1 AU 2001294453 A1 AU2001294453 A1 AU 2001294453A1 AU 2001294453 A AU2001294453 A AU 2001294453A AU 2001294453 A AU2001294453 A AU 2001294453A AU 2001294453 A1 AU2001294453 A1 AU 2001294453A1
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Skiff Sokolov
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Xcounter AB
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Xcounter AB
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Description

NOISE REDUCTION IN IMAGES
FIELD OF INVENTION
The present invention relates generally to noise reduction, and specifically to noise reduction in digital images .
BACKGROUND
All known methods of reduction of high frequency random noise in images reduce to replacement of initial pixel value by some average value over some area near the initial pixel. They differ mainly in the choice of filters, that is in the choice of the weights, with which the pixel values are summed during averaging, and in the choice of the summation algorithms saving computing time. The summation algorithms may involve Fourier transformations, but the principle remains the same.
These methods do not distinguish the noise from the useful high-frequency components of the true image and as a consequence they reduce both to the same extent. The noise reduction smears an image, and the fine details of the image, if they were obscured by the noise, become even less visible after the noise reduction. The smearing is an unavoidable consequence of noise reduction, if no additional information about the noise or the image structure is available .
SUMMARY OF THE INVENTION
An object of the present invention is to improve noise reduction in images, and to diminish negative consequences of noise reduction. This object is among others attained by methods as claimed in claim 1, 5, or 13, and by a computer program product as claimed in claim 21.
An advantage of the present invention is achieved by utilization of different methods in dependence on information known of noise or image structure, whereby improved noise reduction is achieved in accordance with said information.
Further features and advantages of the present invention will be evident from the following description.
DETAILED DESCRIPTION OF EMBODIMENTS
In the following description, for purpose of explanation and not limitation, specific details are set forth, such as particular techniques and applications in order to provide a thorough understanding of the present invention. However, it will be apparent to one skilled in the art that the present invention may be practiced in other embodiment that depart from these specific details. In other instances, detailed descriptions of well-known methods and apparatuses are omitted so as not to obscure the description of the present invention with unnecessary details.
The present invention can, if some additional information about noise or image structure, besides the image itself, is given, be used to improve noise reduction and reduce the image-degrading consequence incurred by the noise reduction. Examples of such additional information is the knowledge that an image has one or several of the following properties : (a) almost all the area of the true image, i.e. of the noise free image, is covered by many-pixel fragments, wherein the intensity is changing smoothly;
(b) the dispersion or other noise parameters, such as F HM (full width at half maximum), are approximately known;
(c) the noise in the image is significantly correlated with the noise in other images (or in different parts of the same image) ; and
(d) the image is computed (reconstructed) from source data, which are common to source data of other images .
Most images have property (a), though the sizes and shapes of smooth fragments may vary much from image to image.
Property (b) is valid for most noisy images, including X-ray pictures .
Properties (c) and (d) are valid for most reconstructed images, including tomographic images and maps of bone density reconstructed from dual-energy X-ray images.
Although the noise in an image may be correlated with the noise in other images or portions thereof for many technical reasons, the most frequent cause of such correlation is the origin of images from the same source data. When several images are computed (reconstructed) from the same data, the same initial noise enters into all the computed images thereby making the noise, obtained by reconstruction, correlated.
The noise in reconstructed images is usually strongly amplified compared to the noise in source data and becomes an imminent problem, which can be solved by the methods of the present invention as will be described below. An important example is the calculation of bone and soft tissue densities from two X-ray images of the same part of a body, but made with X-rays of different energies . Since the reconstruction of the densities is based on the small differences between such X-ray images, the reconstructed densities are very sensitive to the noise in these source images and the noises in the reconstructed images are relatively large and are strongly correlated with each other.
The knowledge of properties (a), (b), (c), and (d) gives new possibilities of noise reduction which were not fully exploited before.
Methods of noise reduction will be described using properties (a), (b), (c), or (d), which accomplish deeper noise reduction and diminish the smearing consequence incurred by the noise reduction. Especially deep noise reduction without any smearing of small details is achievable for reconstructed images when methods using properties (a), (b), (c), or (d) are combined.
Noise in an image is generally any contaminating dirt covering the true image of the object of interest. The shapes of dirt fragments and the statistical properties of dirt may be quite different. The present invention concerns mainly the noise, which looks as dark and light spots or grains scattered over the whole image and covering it densely. If a second image of the same or different object is produced, e.g. another X-ray image taken of a patient, these spots lie at different places in that image than in the first image. The high-frequency noise in pixel based images consists of small spots of the size of one or two pixels . Such noise is often seen in images made by high sensitive films or electronic cameras in conditions of poor illumination or low X-ray flux, when the number of registered photons over a pixel area is not large.
The pixel value p at some point X in a noisy image can be considered as a sum of a mean value P, which the pixel would have in a true image, without noise, and of fluctuation F, wherein the pixel value p is given by the formula:
p = P + F.
The expression "mean value" is denoted by the symbol M, so that P = M(p), and (F) = 0. The main parameter of such noise, describing its strength, is dispersion D. The dispersion D(X) is defined as a mean value of the squared fluctuation for point X, which is given by the formula:
D(X) = M(F2) .
The quality of an image is usually characterized by the so- called signal-to-noise ratio (S/N), which is actually defined as P2/D. The noise reduction makes the dispersion D smaller and improves S/N.
The mean value M(FG) of the product of fluctuations F and G of two pixel values p = P(X) + F, g = P(Y) + G at different points X and Y (Y may be the point having the same coordinates as X but lying in a different image) is called covariance of values p and g. This quantity together with dispersions of p and g builds up a 2x2 covariance matrix
with elements ,
Vu = M ( F2 ) = D ( X ) ,
V12 = V21 = M ( FG) , V22 = M ( G2 ) = D ( Y ) .
The strength of the mutual dependence of fluctuations F and G is measured by the correlation coefficient C, which is given by the formula:
c = v12/ Λ/v11v22 ,
which may vary from -1 to 1. The values C = -1 and C = 1 correspond to complete dependence of fluctuations, so F and G are proportional to each other and by knowing F one may thereby calculate G, and vice versa. The dispersion D of the linear combination αp + βg of the pixel values p and g is expressed by the formula:
D(αp + βg) = α2Vn + β2V22 + 2αβV12.
The mean value is most often unknown and is approximately estimated by the average value over some number N of independently obtained values x± of the same quantity x, wherein the average value of x is given by the formula:
where positive coefficients w.^ are called weights. If the weights are equal to one, which is the case if all xt have the same accuracy, the average of x is given by the formula:
For example, the true pixel value P(X) at point X may be estimated as Avr(p) of values x of pixels at points Y± in some area around X, if there are reasons to believe that true values P± differ little from P(X), or their deviations from P(X) compensate each other. The dispersion D(X) may be estimated as the average of the squared deviations from Avr(p), which is given by the formula:
D(x)«Avr((p-Avr(p))2),
if there is reason to believe that the noise is of the same strength in the chosen area around X. Similarly, covariance V12 may be estimated as :
V12 «Avr((p-Avr(p))(g-Avr(g))) .
The usual methods of noise reduction replace each pixel of an image by the average value over some area around the pixel. This area together with a table of coefficients, with which the pixel values are summed, is usually called a filter. A simple example of a filter is a square of nine pixels, the values of which are summed with the same coefficient 1/9 when the average is calculated. Averaging with such a filter diminishes the noise dispersion nine times, but smears the image making each visible line therein four pixels wider and correspondingly decreasing its contrast. The methods described in the present invention achieve greater reduction of noise dispersion at the same smearing consequence compared to conventional noise reduction methods, or reduce the smearing consequence for the same noise reduction compared to conventional noise reduction methods .
A tomographic reconstruction is the calculation of the density of an object in several planes cutting the object using a plurality of X-ray pictures or NMR (Nuclear Magnetic Resonance) data. Reconstruction of such images having correlated noise is a complex procedure.
The reconstruction of the densities of bone and soft tissue is more simple and consists of calculation of two functions a(p,g) and b(p,g) giving the densities of the bone and soft tissue as functions of pixel values p and g at point X in two X-ray images obtained with X-rays of different energies. The functions a(p,g) and b(p,g) are usually obtained from calibration X-ray exposures of objects having known densities of bone and soft tissue equivalents. Both functions are very sensitive to small differences of pixel values p - g, so the calculated densities have larger noise dispersions and worse signal-to-noise ratios than the original X-ray images. The noise in the bone density image is strongly correlated with the noise in the soft tissue density image, where the correlation coefficient C is negative and close to -1.
A first method of noise reduction using property (a) of the true image (presence of smooth fragments) and property (b) of the noise (known dispersion) will now be described.
The first method reduces noise at each point X of an image by averaging the pixel values over a region R, wherein the averaging region R is dependent on X and is selected as the largest region around X, which includes only pairs of pixels Y, Z symmetrically placed with respect to X, i.e. a straight line through the pixel pair crosses the point X, and having the half sum (p(Y) + p(Z))/2 of pixel values deviating from each other within a limit corresponding to the level of the noise in the image and to a user-defined tolerance preference L for the noise-reduced image.
The largest averaging region R approximating the optimal one is found as follows .
Firstly, a selected pixel X is included into the region R. Then, the pairs of pixels Y = X — v, Z = X + v, where v is a shift vector, symmetrical with respect to point X and touching the already filled part of the region R, are considered pair by pair and a check is made whether the squared difference of their half sum p(v) = (p(Y) + p(Z))/2 and the average value of the pixels already included into R does not exceed the dispersion D of the noise present in the mentioned difference multiplied by some tolerance level L set by the user. If the pair of pixels passes the test, it is included into R. As long as the region R growths, the process continues with consideration of further pairs in the manner as described above. The process is stopped when no new pair of pixels passes the test checking against a tolerance level of the dispersion. Then the average pixel value over R is used as a value of pixel X in an image with reduced noise.
Better approximations of an optimal region R may be found in a similar way by inclusion of a test for randomness of deviations of pixel values and a test for the presence near X of certain expected non-random details of the true image like thin lines . The found region R may be revised and made more dense and regular by inclusion into the region R of part of the internal points rejected in the first pass and by smoothing the borderline of the region R.
The region R must be symmetric to eliminate the distortion of the image due to contribution of the gradient of true image intensity into the average value.
The limitation of deviations of half sums of pixel values from the average value over R limits the distortion of the noise-reduced image due to the contribution of the curvature of the true image intensity by about vDL/ .
Generally, the region R is elongated in the direction of minimal curvature of the image intensity. For pixels X near the boundary of smooth fragments, the region R becomes narrow and may be reduced to a line.
Due to statistical uncertainty of the boundary between the region R and surrounding image fragments , the averaging over the region R result in some smearing of the image. However, the range of such smearing is several times smaller than the range of the smearing in the conventional noise filtering methods, which is of the order of the filter diameter.
The choice of the averaging region R symmetric with respect to X is usual for all filters performing noise reduction, since it makes the average closer to the true value than in case of an asymmetric region. The present invention discloses that the region R is optimized individually for each point X and that in the selection of this region only the half sums p(v) of pixel values at symmetrical points Y,
Z are used instead of individual pixel values . This makes the process of choice of region R insensitive to the gradient of intensity of the true image. In particular, this process of choice is tested as mentioned above and is written as the formula:
(p(v) - Avrv(X))2 < D(X,v)L,
where Avrv here denotes the average over all pixel pairs earlier included into R and D(X,v) stands for the dispersion of the difference p(v) — Avrv(X) .
The dispersion D(X,v) - D(X)*(l/2 + 1/n) , where n is a number of pixels in R, may be known from different sources: from analysis of earlier images obtained using the same technology, from the number of photons registered in case of Poisson statistics of noise, or from the image itself by means of the formula D(X,v) = Avr((p — Avr(p))2), where p = p(v) and averaging is performed over all pixel pairs earlier included in to R. The estimation of D(X) and D(X,v) may be performed in any of many ways, which is obvious for a person skilled in the art.
The details of the algorithm picking up the pairs of pixels tested for possible inclusion into region R may be varied in any of a plurality of ways, which is obvious for a person skilled in the art. The process of checking is mentioned solely to give a general idea how the method may be realized. Actually, in a tested algorithm, the order, in which the pairs of pixels were tested, was fixed so as to allow the region R to grow continuously, by one-pixel layers of square shape until the deviation checks were positive. Every time when a new pair was added to the region R, the pixels touching this pair were marked as possible extensions of R. The next picked pair of pixels was first checked for being marked. If it was unmarked, it was skipped without other more time-consuming tests . When none of the pixels in a next completed square layer passed the tests, the process of expansion of the region R stops.
The purpose of the additional checks for randomness of deviations is intended to clear the region R from compact groups of pixels (and their symmetrical partners) which pass the tests . for individual pairs , but which deviate collectively too much to one side. If deviations are random, the squared deviation of the average of K half sums of pixel pairs from the true value (P(X) — Avrκp(v))2 may only exceed 2D(X)/K in a few percent of cases. If a group of pixel pairs deviates more, its exclusion from the region R will most probably make the average over the region R closer to the pixel value P(X) of the true image. A check for the presence of certain suspected details is similar to the check above, but is more sensitive for deviation in groups of pixels of certain shapes .
The region R found in a one-pass process usually contains many holes, where most of the pixels do not deviate much, but at the time of their check during the first pass did not touch pixels already included into R. The revision of R with the account of points included afterwards and with slightly more liberal deviation test does not increase the size of R much but makes it more dense.
The pixels in a borderline of a dense many-pixel region R should, normally, be in contact with 4 or 5 pixels belonging to this region. A rejection of peripheral points in contact with less than 3 pixels belonging to the region R does not decrease significantly the number of pixels in the region R, but smoothes the borderline and decreases the risk of smearing distortions .
A second method of noise reduction using property (c) that the noise in an image is significantly correlated with the noise in other images will now be described.
The second method reduces noise at each point X of an image I- correlated with the noise at a corresponding point Y of an image I2 by way of the variance-covariance matrix V for pixel values p(X,I.) and p(Y,I2) by means of:
(1) obtaining from image I2 a noise reduced image I3 by any noise reduction method not using image I., for instance the first method described above;
(2) calculating an estimate F(Y) of the fluctuation of the pixel value at point Y given by the formula:
F(Y) = p(Y,I2) - p(Y,I3); (3) calculating the estimate H(X,I1) for fluctuation G(X,I1) of pixel value ρ(X,l.) in image lx with the help of the formula:
H,X,I., -
where covariances V of pixel values are either estimated by statistical analysis of images I- and I2 or calculated from the properties of their possible common source; and
(4) obtaining from image I- a noise reduced image I4 by subtracting from each pixel value of image I- the estimate of its fluctuation, which is given by the formula:
p(X,I4) = p(X,I1) - H(X,I-).
If the matrix V as a function of X is known the implementation is straightforward and reduces to repeating calculations (2), (3), and (4) for each point X.
If the matrix V is not given its estimate at each point X may be found by a standard method as the average value over a small region around the point X and corresponding region around the point Y of products of deviations of pixel values from their average values over the same regions.
The second method reduces in image I- only the part of its noise which is correlated with the noise in image I2 and does not remove the part of noise in image I- which is independent from the noise in image I2. So the maximal coefficient of noise reduction by the second method is limited by the difference 1 — C2, where C is the correlation coefficient, which is given by the formula:
If C2 is close to 1.0, the noise reduction in image I4 may be very deep. If C2 is noticeably smaller than 1.0, image I4 still contains noticeable independent noise. This noise may be reduced by applying to image I4 other noise-reduction methods (including the first method).
The noise reduction by the second method has some specific consequences . They are related with the fact that image I3 obtained from image I2 contains smearing distortions . These distortions pass into estimates H and from them pass into the noise-reduced image I4, where they look as a kind of shadows of boundaries of objects on image I2.
Since images Ilf I2 are different, the boundaries of image fragments in image I, and image I2, generally do not coincide and shadows of boundaries of fragments of image I2 do not smear details in image I4. These shadows obscure details in image I4 much less than the original noise in image I-, so small details in image I. lost in the noise in image lx become visible after such noise reduction. By contrast, usual noise-reduction methods make small details less visible after noise reduction.
The intensity and widths of mentioned shadows of image I2 in image I4 depend on the choice of the method and parameters of noise reduction for image I3. The optimal choice of noise reduction for image I2 depends on the structure of images 11 and I2 and of preferences of the user of image I4. The choice of the first method of the present invention for noise reduction in image I2 is advantageous since it reduces the shadows of image I2 obscuring the image I4.
The noise remaining in image I4 can be further reduced by many methods. A comparison of an image, obtained from image
I4 after noise reduction by the first method, with a true clean image shows that, when the noise correlation is present, the combination of the second and the first method makes very deep noise reduction without noticeable distortions or smearing.
The roles of images Ij and I2 may be interchanged, so the noise may be reduced in image I2 by the second method as well.
In an experiment with two artificially constructed images I-, I2, imitating images taken with high energy respective low energy X-rays, the noise was 95% correlated. To reduce noise in image I2, the first method was used with an additional check sensitive to the systematic deviation of local intensity from the average one and reducing "shadows" of image l2 in image I4.
A comparison of image I4 and noise-reduced image, obtained from image I- by the first method, gave the result that the first method is more efficient for large fragments (for background), while the second method is advantageous for small fragments and details.
A third method of noise reduction using properties (a), (b) , (c), and property (d) that images are reconstructed from common source images (data) will now be described.
The third method reduces noise in images lt and I2 reconstructed (computed) as known smooth functions Ix = a(Sι,S2) and I2 = b(S1,S2) from source images Sx and S2 with independent noise of known dispersion by combination of the first and the second method modified to exploit images Sx and S2 and functions a and b as follows:
(5) a noise reduced image I3 is obtained from image I2 by noise reduction by the first method, where the averaging region R is selected as the maximal region R around Y, which includes only the pairs of pixels symmetrically placed with respect to Y and; either
having the sums of values deviating from each other within the limits corresponding to the level of the noise in the image and to a tolerance preferences of the user of the noise-reduced image; or
corresponding to pairs of pixels in source images S- and S2 having the sums of values deviating from each other within the limits corresponding to the level of the noise in the images S- and S2 and to a tolerance preferences of the user of the noise-reduced image;
(6) the estimate F(Y) given by the formula:
F(Y) = p(Y,I2) - P(Y,I3)
of the fluctuation of the pixel value at point Y is calculated;
(7) the covariance matrix V for pixel values p(X,Ix) and p(Y,I2) at points X and Y on images It and I2 is computed in linear approximation as given by the formulae:
where D- and D2 are the noise dispersions in images Sx and S2 at points Z and T corresponding to point Y; (8) the estimate H(X,I.) given by the formula:
of fluctuation G(X,I.) of pixel value p(X,Ix) in image lx is calculated; and
(9) a noise reduced image I4 is obtained from image I, by subtracting the estimate of fluctuation from each pixel value, wherein P(X,I4) is given by the formula:
p(X,I4) = p(X,Ix) - H(X,I.).
The relations IL = a(S1,S2) and I2 = b(S1,S2) between images are pixel-wise, that is the point X on image I- corresponds uniquely to points Y, Z and T on images I2, S-. and S2, respectively. So, these relations can be written for pixels as given by the formulae:
p(X,l.) = a(p(Z,S1),p(T,S2)),
P(Y.I2) = b(p(Z,S1),p(T,S2)).
The implementation is straightforward and consists of performing operations (5)-(9) for all pixels of image I-. The simplest implementation of point (5) is to check only the difference between the sum of values and the double value of a central pixel (the check is done both for image I- and for the source images S- and S2). The use of source images in the step (5) usually makes the quality of the region R found by the pixel-selection process described in the simplest implementation of the first method good enough without additional checks and boundary smoothing.
More advanced implementation of point ( 5 ) may check as well the deviation of the average source value from the average of the values of several pixel pairs touching the pixel pair in question. Such test locates more accurately the boundaries of the region R.
The most time-consuming step of the third method is the computation of the matrix V at all points. However, the ratio of its elements used in step (8) can be computed and tabulated beforehand as a two-argument function. In this case the computation of the matrix V is done quickly by interpolation and the whole noise reduction procedure takes about the same time as the calculation of image I. from images Sx and S2.
The smooth fragments of the source images correspond to smooth fragments on reconstructed images (but not vice versa, since reconstructed images contain smaller number of details than the source ones). Since the source images have relatively small noise, their use helps to define reliably the part of the region R, which does not contain details of the true image able to distort the average value, and helps to reduce statistical uncertainties of the boundaries . This makes the third method applicable in cases of very noisy (reconstructed) images, for which all other methods of noise reduction become inefficient.
In cases of less noisy images, when different noise reduction methods are applicable, the third method makes smearing distortions in image I3 smaller, and image I4 cleaner from shadows of fragment boundaries in image I2. These shadows may become even indistinguishable.
The squared correlation coefficient for reconstructed images often exceeds 0.90 and noise dispersion can be reduced in image I4 more than a dozen times, if matrix V is known accurately enough. The knowledge of reconstruction functions a and b gives the possibility to compute V and the ratio between fluctuations H and F more accurately than by analysis of images I, and I2 themselves and achieve noise reduction close to the theoretical limit.
In an experiment of the third method, an image I- and an image I2 were reconstructed from two source images of simulated X-ray pictures of the combination of bone and tissue.
Reconstruction greatly amplifies the small intensity- dependent noise present in a source image (image S- or S2), so the noise in images I- and I2 was large and boundaries of fragments were smeared. This noise in I- was 95% correlated with the noise in l2. In this case, difficult to the first method, the third method remained efficient and gave an image were the "shadows" of other image are noticeable, but the noise reduction is deep and small details are reproduced without any smearing.
Preferably, the methods of the present invention is performed by software code, located in the internal memory of a computer, and executed by a processor of that computer.
It will be obvious that the present invention may be varied in a plurality of ways . Such variations are not to be regarded as departure from the scope of the present invention. All such variations as would be obvious to one skilled in the art are intended to be included within the scope of the appended claims .

Claims (21)

1. A method for reduction of noise in a digital image including a plurality of pixels, characterized by the steps of :
- adding a selected pixel to a region (R);
- grouping pixels touching the region (R) in pairs, wherein the pixels of each pair being symmetrically located with respect to said selected pixel;
- adding said grouped pairs, pair by pair, to the region (R) provided that the squared difference of the half sum of the pair and the selected pixel value or an average of pixel values in the region (R) does not exceed the dispersion (D) of the noise of said difference multiplied by a tolerance level (L);
- repeating said steps of grouping and adding said grouped pairs until that, in said step of adding said pairs, the condition for adding said grouped pairs is not fulfilled for any of the pairs ;
- averaging the pixel values of said region (R); and
- using the thus averaged pixel value for said selected pixel in reconstruction of said image.
2. The method as claimed in claim 1, wherein each of said repeated steps of grouping excludes pixels grouped in pairs in any previous step of grouping.
3. The method as claimed in claim 1, wherein said step of adding said pairs excludes pairs that do not touch any of the pairs already included in said region (R) .
4. The method as claimed in any of claims 1-3, wherein said method is carried out a second time and wherein each of said steps of grouping during said second time only includes pixelβ which were not included in the region (R) after the method had been carried out the first time.
5. A method for reduction of noise in a first image including a plurality of pixels, characterized by the steps of:
- obtaining a noise reduced value of a second pixel located in a second image;
- calculating an estimate of the fluctuation of said second pixel;
- calculating an estimate of the fluctuation of a first pixel located in said first image, wherein said fluctuation of said first pixel is correlated to said fluctuation of said second pixel;
- obtaining a noise reduced value of said first pixel by subtracting said estimate of the fluctuation of the first pixel from said first pixel; and
- using said noise reduced value of said first pixel in reconstruction of said first image.
6. The method as claimed in claim 5, wherein the absolute value of said correlation is at least 0.8, preferably at least 0.9, and more preferably at least 0.95.
7. The method as claimed in claim 5 or 6, wherein said noise reduced value of said second pixel is obtained without use of said first image.
8. The method as claimed in claim 7, wherein said noise reduced value of said second pixel is obtained by the method as claimed in any of claims 1-4.
9. The method as claimed in any of claims 5-8, wherein said estimation of the fluctuation of said second pixel is calculated as the difference of the pixel value of said second pixel and the noise reduced pixel value of said second pixel.
10. The method as claimed in any of claims 5-9, wherein said estimate of the fluctuation of said first pixel is calculated as the product of the fluctuation of said second pixel and the quotient of an estimate of the covariance of said first and second pixels and an estimate of the variance of said second pixel.
11. The method as claimed in claim any of claims 5-10, wherein said first image is reconstructed from a third image S. and a fourth image S2 and said second image is also reconstructed from Sα and S2, and wherein said estimate of the fluctuation of said first pixel is calculated by the formula:
F(Y\V(P(X.I1),P(Y.I2)) v(p(γ,I2),p(γ,I2))
wherein F(Y) is the fluctuation of the second pixel and V is the covariance between pixel values p of the first pixel X in the first image Ij and of the second pixel Y in the second image I2, and wherein V(p(X,l. ) ,p(Y,i2) ) is estimated by the formula:
and V(p(Y,I2) ,p(Y,I2) ) is estimated by the formula:
wherein a is a first function of Sx and S2, b is a second function of Sx and S2, D- is the noise dispersion of a pixel in S- corresponding to the second pixel Y, and D2 is the noise dispersion of a pixel in S2 corresponding to the second pixel Y.
12. The method as claimed in claim 11, wherein said first and second functions are smooth functions.
13. A method for reduction of noise in a first image including a plurality of pixels, characterized by the steps of:
- selecting a first pixel (X) in said first image;
- selecting a second pixel (XI) in said first image or in a second image;
- including said second pixel (XI) into a second region
(Ri);
- grouping pixels touching the second region (Rl) in pairs, wherein the pixels of each pair being symmetrically located with respect to said second pixel;
- adding said grouped pairs, pair by pair, to the second region (Rl) provided that the squared difference of the half sum of the pair and the selected pixel value or an average of pixel values in the second region (Rl) does not exceed the dispersion (D) of the noise of said difference multiplied by a tolerance level ( ); - repeating said steps of grouping and adding said grouped pairs until that, in said step of adding said pairs, the condition for adding said grouped pairs is not fulfilled for any of the pairs;
- defining a first region (R) , which surrounds said first pixel (X) as said second region (Rl) surrounds said second pixel (XI);
- averaging the pixel values of the first region (R) ; and
- using the thus averaged pixel value for the first pixel (X) of said first region (R) in reconstruction of said first image .
14. The method as claimed in claim 13, wherein each of said repeated steps of grouping excludes pixels grouped in pairs in any previous step of grouping.
15. The method as claimed in claim 13 or 14, wherein said second pixel (XI) is located in said second image.
16. The method as claimed in claim 15, wherein said second pixel (XI) is located in said second image as said first pixel (X) is located in said first image.
17. The method as claimed in any of claims 13-16, wherein noise in said first image is reduced by the method according to any of claims 1-4.
18. The method as claimed in any of claims 13-16, wherein noise in said first image is reduced by the method according to any of claims 5-12.
19. The method as claimed in any of claims 5-12, wherein noise in said first image is reduced by the method according to any of claims 1-4.
20. The method as claimed in any of claims 5-12, wherein noise in said image is reduced by the method according to any of claims 13-16.
21. A computer program product directly loadable into the i internal memory of a computer, said computer program product comprising software code portions for performing the method as claimed in any previous claim when said computer program product is run on said computer.
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Families Citing this family (12)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US7139035B2 (en) * 2002-12-30 2006-11-21 Texas Instruments Incorporated Video noise floor estimator with impulse noise detection
JP4305071B2 (en) 2003-06-30 2009-07-29 株式会社ニコン Signal correction method
US7724979B2 (en) * 2004-11-02 2010-05-25 Broadcom Corporation Video preprocessing temporal and spatial filter
EP1791153B1 (en) 2005-11-28 2010-01-27 LG Electronics Inc. Plasma display apparatus
US20070133893A1 (en) * 2005-12-14 2007-06-14 Micron Technology, Inc. Method and apparatus for image noise reduction
JP4290193B2 (en) * 2006-12-26 2009-07-01 三洋電機株式会社 Image processing device
CN101355371B (en) * 2008-09-18 2012-03-28 北京天碁科技有限公司 Mobile terminal and method for receiving data thereof
KR101901602B1 (en) 2011-01-14 2018-09-27 삼성전자주식회사 Apparatus and method for noise removal in a digital photograph
US8885903B2 (en) * 2011-11-16 2014-11-11 General Electric Company Method and apparatus for statistical iterative reconstruction
CN104240188B (en) * 2013-06-14 2017-09-12 华为技术有限公司 A kind of method and device for filtering out noise in pixel
KR102169435B1 (en) * 2016-03-21 2020-10-23 후아웨이 테크놀러지 컴퍼니 리미티드 Adaptive quantization of weighted matrix coefficients
CN109978832B (en) * 2019-03-01 2022-11-22 宁波大学 Twisted pair lay detection method based on edge reconstruction

Family Cites Families (17)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
JPS63222589A (en) * 1987-03-12 1988-09-16 Toshiba Corp Noise reducing circuit
US4937878A (en) * 1988-08-08 1990-06-26 Hughes Aircraft Company Signal processing for autonomous acquisition of objects in cluttered background
US5485371A (en) * 1990-02-14 1996-01-16 Fuji Photo Film Co., Ltd. Method for forming energy subtraction radiation images, and method and apparatus for smoothing radiation images
US5099329A (en) * 1990-04-17 1992-03-24 Graphic Communication Tech., Ltd. Noise reduction method and device for image signal
JP3484757B2 (en) * 1994-05-13 2004-01-06 ソニー株式会社 Noise reduction method and noise section detection method for voice signal
GB2303511A (en) 1995-07-19 1997-02-19 Univ Manchester Compensating for backscattered light
FR2737034A1 (en) * 1995-07-21 1997-01-24 Philips Electronique Lab METHOD FOR SPATIALLY PROCESSING A DIGITAL IMAGE FOR NOISE REDUCTION, AND DEVICE USING THE SAME
JPH11501140A (en) * 1995-12-21 1999-01-26 フィリップス エレクトロニクス エヌ ベー Direction noise reduction
US5771318A (en) 1996-06-27 1998-06-23 Siemens Corporate Research, Inc. Adaptive edge-preserving smoothing filter
US5959693A (en) 1997-05-07 1999-09-28 General Instrument Corporation Pixel adaptive noise reduction filter for digital video
US6061100A (en) * 1997-09-30 2000-05-09 The University Of British Columbia Noise reduction for video signals
US6108455A (en) 1998-05-29 2000-08-22 Stmicroelectronics, Inc. Non-linear image filter for filtering noise
FR2790123B1 (en) 1999-02-18 2001-04-27 Ge Medical Syst Sa PROCESS FOR PROCESSING A SEQUENCE OF FLUOROSCOPIC IMAGES OF A BODY, IN A WAY TO IMPROVE THE QUALITY OF THE VISUALIZED IMAGES
JP2001008038A (en) * 1999-06-24 2001-01-12 Fuji Photo Film Co Ltd Image processing method, image processor and multi-band color photographing system
US6731806B1 (en) 1999-10-08 2004-05-04 Eastman Kodak Company Region growing based noise reduction method for digital images
US6621937B1 (en) 1999-10-08 2003-09-16 Eastman Kodak Company Removing chroma noise from digital images by using variable shape pixel neighborhood regions
DE102005009357A1 (en) 2005-03-01 2006-09-07 Fujitsu Siemens Computers Gmbh Computer system with an interface device and deactivatable data connections and method for data transmission

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