| 1 | % 'pivlab': function piv.m adapted from PIVlab http://pivlab.blogspot.com/ |
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| 2 | %-------------------------------------------------------------------------- |
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| 3 | % function [xtable ytable utable vtable typevector] = pivlab (image1,image2,ibx,iby step, subpixfinder, mask, roi) |
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| 4 | % |
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| 5 | % OUTPUT: |
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| 6 | % xtable: set of x coordinates |
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| 7 | % ytable: set of y coordiantes |
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| 8 | % utable: set of u displacements (along x) |
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| 9 | % vtable: set of v displacements (along y) |
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| 10 | % ctable: max image correlation for each vector |
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| 11 | % typevector: set of flags, =1 for good, =0 for NaN vectors |
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| 12 | % |
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| 13 | %INPUT: |
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| 14 | % image1:first image (matrix) |
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| 15 | % image2: second image (matrix) |
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| 16 | % ibx,iby: size of the correlation box along x and y (in px) |
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| 17 | % step: mesh of the measurement points (in px) |
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| 18 | % subpixfinder=1 or 2 controls the curve fitting of the image correlation |
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| 19 | % mask: =[] for no mask |
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| 20 | % roi: 4 element vector defining a region of interest: x position, y position, width, height, (in image indices), for the whole image, roi=[]; |
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| 21 | function [xtable ytable utable vtable ctable F result_conv errormsg] = pivlab (image1,image2,ibx2,iby2,isx2,isy2,shiftx,shifty, GridIndices, subpixfinder,mask) |
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| 22 | %this funtion performs the DCC PIV analysis. Recent window-deformation |
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| 23 | %methods perform better and will maybe be implemented in the future. |
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| 24 | nbvec=size(GridIndices,1); |
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| 25 | xtable=zeros(nbvec,1); |
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| 26 | ytable=xtable; |
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| 27 | utable=xtable; |
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| 28 | vtable=xtable; |
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| 29 | ctable=xtable; |
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| 30 | F=xtable; |
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| 31 | result_conv=[]; |
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| 32 | errormsg=''; |
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| 33 | %warning off %MATLAB:log:logOfZero |
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| 34 | [npy_ima npx_ima]=size(image1); |
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| 35 | if ~isequal(size(image2),[npy_ima npx_ima]) |
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| 36 | errormsg='image pair with unequal size'; |
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| 37 | return |
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| 38 | end |
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| 39 | |
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| 40 | %% mask |
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| 41 | testmask=0; |
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| 42 | if exist('mask','var') && ~isempty(mask) |
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| 43 | testmask=1; |
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| 44 | if ~isequal(size(mask),[npy_ima npx_ima]) |
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| 45 | errormsg='mask must be an image with the same size as the images'; |
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| 46 | return |
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| 47 | end |
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| 48 | % Convention for mask |
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| 49 | % mask >200 : velocity calculated |
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| 50 | % 200 >=mask>150;velocity not calculated, interpolation allowed (bad spots) |
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| 51 | % 150>=mask >100: velocity not calculated, nor interpolated |
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| 52 | % 100>=mask> 20: velocity not calculated, impermeable (no flux through mask boundaries) |
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| 53 | % 20>=mask: velocity=0 |
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| 54 | test_noflux=(mask<=100) ; |
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| 55 | test_undefined=(mask<=200 & mask>100 ); |
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| 56 | image1(test_undefined)=min(min(image1))*ones(size(image1));% put image to zero in the undefined area |
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| 57 | image2(test_undefined)=min(min(image1))*ones(size(image1));% put image to zero in the undefined area |
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| 58 | end |
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| 59 | image1=double(image1); |
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| 60 | image2=double(image2); |
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| 61 | |
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| 62 | %% calculate correlations: MAINLOOP |
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| 63 | corrmax=0; |
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| 64 | sum_square=1;% default |
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| 65 | for ivec=1:nbvec |
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| 66 | iref=GridIndices(ivec,1); |
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| 67 | jref=GridIndices(ivec,2); |
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| 68 | testmask_ij=0; |
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| 69 | test0=0; |
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| 70 | if testmask |
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| 71 | if mask(jref,iref)<=20 |
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| 72 | vector=[0 0]; |
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| 73 | test0=1; |
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| 74 | else |
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| 75 | mask_crop1=mask(jref-iby2:jref+iby2,iref-ibx2:iref+ibx2); |
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| 76 | mask_crop2=mask(jref+shifty-isy2:jref+shifty+isy2,iref+shiftx-isx2:iref+shiftx+isx2); |
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| 77 | if ~isempty(find(mask_crop1<=200 & mask_crop1>100,1)) || ~isempty(find(mask_crop2<=200 & mask_crop2>100,1)); |
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| 78 | testmask_ij=1; |
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| 79 | end |
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| 80 | end |
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| 81 | end |
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| 82 | if ~test0 |
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| 83 | image1_crop=image1(jref-iby2:jref+iby2,iref-ibx2:iref+ibx2); |
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| 84 | image2_crop=image2(jref+shifty-isy2:jref+shifty+isy2,iref+shiftx-isx2:iref+shiftx+isx2); |
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| 85 | image1_crop=image1_crop-mean(mean(image1_crop)); |
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| 86 | image2_crop=image2_crop-mean(mean(image2_crop)); |
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| 87 | %reference: Oliver Pust, PIV: Direct Cross-Correlation |
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| 88 | result_conv= conv2(image2_crop,flipdim(flipdim(image1_crop,2),1),'valid'); |
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| 89 | corrmax= max(max(result_conv)); |
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| 90 | result_conv=(result_conv/corrmax)*255; %normalize, peak=always 255 |
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| 91 | %Find the correlation max, at 255 |
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| 92 | [y,x] = find(result_conv==255,1); |
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| 93 | if ~isempty(y) && ~isempty(x) |
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| 94 | try |
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| 95 | if subpixfinder==1 |
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| 96 | [vector,F(ivec)] = SUBPIXGAUSS (result_conv,x,y); |
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| 97 | elseif subpixfinder==2 |
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| 98 | [vector,F(ivec)] = SUBPIX2DGAUSS (result_conv,x,y); |
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| 99 | end |
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| 100 | sum_square=sum(sum(image1_crop.*image1_crop)); |
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| 101 | ctable(ivec)=corrmax/sum_square;% correlation value |
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| 102 | % if vector(1)>shiftx+isx2-ibx2+subpixfinder || vector(2)>shifty+isy2-iby2+subpixfinder |
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| 103 | % F(ivec)=-2;%vector reaches the border of the search zone |
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| 104 | % end |
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| 105 | catch ME |
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| 106 | vector=[0 0]; %if something goes wrong with cross correlation..... |
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| 107 | F(ivec)=3; |
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| 108 | end |
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| 109 | else |
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| 110 | vector=[0 0]; %if something goes wrong with cross correlation..... |
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| 111 | F(ivec)=3; |
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| 112 | end |
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| 113 | if testmask_ij |
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| 114 | F(ivec)=3; |
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| 115 | end |
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| 116 | end |
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| 117 | |
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| 118 | %Create the vector matrix x, y, u, v |
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| 119 | xtable(ivec)=iref+vector(1)/2;% convec flow (velocity taken at the point middle from imgae1 and 2) |
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| 120 | ytable(ivec)=jref+vector(2)/2; |
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| 121 | utable(ivec)=vector(1); |
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| 122 | vtable(ivec)=vector(2); |
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| 123 | end |
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| 124 | result_conv=result_conv*corrmax/(255*sum_square);% keep the last correlation matrix for output |
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| 125 | |
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| 126 | |
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| 127 | function [vector,F] = SUBPIXGAUSS (result_conv,x,y) |
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| 128 | vector=[0 0]; %default |
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| 129 | F=0; |
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| 130 | [npy,npx]=size(result_conv); |
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| 131 | |
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| 132 | % if (x <= (size(result_conv,1)-1)) && (y <= (size(result_conv,1)-1)) && (x >= 1) && (y >= 1) |
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| 133 | %the following 8 lines are copyright (c) 1998, Uri Shavit, Roi Gurka, Alex Liberzon, Technion Israel Institute of Technology |
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| 134 | %http://urapiv.wordpress.com |
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| 135 | peaky = y; |
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| 136 | if y <= npy-1 && y >= 1 |
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| 137 | f0 = log(result_conv(y,x)); |
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| 138 | f1 = real(log(result_conv(y-1,x))); |
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| 139 | f2 = real(log(result_conv(y+1,x))); |
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| 140 | peaky = peaky+ (f1-f2)/(2*f1-4*f0+2*f2); |
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| 141 | else |
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| 142 | F=-2; % warning flag for vector truncated by the limited search box |
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| 143 | end |
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| 144 | peakx=x; |
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| 145 | if x <= npx-1 && x >= 1 |
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| 146 | f0 = log(result_conv(y,x)); |
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| 147 | f1 = real(log(result_conv(y,x-1))); |
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| 148 | f2 = real(log(result_conv(y,x+1))); |
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| 149 | peakx = peakx+ (f1-f2)/(2*f1-4*f0+2*f2); |
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| 150 | else |
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| 151 | F=-2; % warning flag for vector truncated by the limited search box |
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| 152 | end |
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| 153 | vector=[peakx-floor(npx/2)-1 peaky-floor(npy/2)-1]; |
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| 154 | % else |
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| 155 | % vector=[NaN NaN]; |
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| 156 | % end |
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| 157 | |
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| 158 | function [vector,F] = SUBPIX2DGAUSS (result_conv,x,y) |
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| 159 | vector=[0 0]; %default |
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| 160 | F=-2; |
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| 161 | peaky=y; |
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| 162 | peakx=x; |
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| 163 | [npy,npx]=size(result_conv); |
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| 164 | if (x <= npx-1) && (y <= npy-1) && (x >= 1) && (y >= 1) |
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| 165 | F=0; |
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| 166 | for i=-1:1 |
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| 167 | for j=-1:1 |
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| 168 | %following 15 lines based on |
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| 169 | %H. Nobach Æ M. Honkanen (2005) |
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| 170 | %Two-dimensional Gaussian regression for sub-pixel displacement |
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| 171 | %estimation in particle image velocimetry or particle position |
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| 172 | %estimation in particle tracking velocimetry |
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| 173 | %Experiments in Fluids (2005) 38: 511515 |
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| 174 | c10(j+2,i+2)=i*log(result_conv(y+j, x+i)); |
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| 175 | c01(j+2,i+2)=j*log(result_conv(y+j, x+i)); |
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| 176 | c11(j+2,i+2)=i*j*log(result_conv(y+j, x+i)); |
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| 177 | c20(j+2,i+2)=(3*i^2-2)*log(result_conv(y+j, x+i)); |
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| 178 | c02(j+2,i+2)=(3*j^2-2)*log(result_conv(y+j, x+i)); |
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| 179 | %c00(j+2,i+2)=(5-3*i^2-3*j^2)*log(result_conv_norm(maxY+j, maxX+i)); |
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| 180 | end |
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| 181 | end |
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| 182 | c10=(1/6)*sum(sum(c10)); |
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| 183 | c01=(1/6)*sum(sum(c01)); |
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| 184 | c11=(1/4)*sum(sum(c11)); |
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| 185 | c20=(1/6)*sum(sum(c20)); |
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| 186 | c02=(1/6)*sum(sum(c02)); |
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| 187 | deltax=(c11*c01-2*c10*c02)/(4*c20*c02-c11^2); |
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| 188 | deltay=(c11*c10-2*c01*c20)/(4*c20*c02-c11^2); |
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| 189 | if abs(deltax)<1 |
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| 190 | peakx=x+deltax; |
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| 191 | end |
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| 192 | if abs(deltay)<1 |
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| 193 | peaky=y+deltay; |
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| 194 | end |
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| 195 | end |
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| 196 | vector=[peakx-floor(npx/2)-1 peaky-floor(npy/2)-1]; |
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