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Eucliedan Distances In two Arrays

조회 수: 4 (최근 30일)
Osita Onyejekwe
Osita Onyejekwe 2016년 11월 18일
답변: Greg Dionne 2016년 11월 18일
I have an array of (X-Y) Coordinates,
Observed_Signal_Positive_Inflection_Points_Coordinates =
0.1040 -0.0432
0.2090 -0.0264
0.3140 -0.0096
0.4180 -0.0527
0.5230 -0.0359
0.6280 -0.0191
0.7330 -0.0023
0.8370 -0.0455
0.9420 -0.0287
Using each of the 9 coordinates I want to find its distances from a second array of (X-Y) coordinates (D = sqrt(X^2+Y^2))
Positive_Inflection_Points_Coordinates_denoised =
0.0020 0.8093
0.0040 0.7637
0.0070 0.7494
0.0130 0.4747
0.0250 0.6108
0.0260 0.6134
0.0980 -0.1331
0.1000 0.0740
0.1030 0.1959
0.1880 -0.5077
0.1980 -0.2024
0.2020 0.1651
0.2060 0.2103
0.2090 0.3228
0.2120 0.4626
0.2970 -0.5625
0.3050 -0.3444
0.3130 -0.0907
0.3150 0.0769
0.3200 0.2399
0.3950 -0.7348
0.4000 -0.6530
0.4130 -0.2682
0.4150 -0.1705
0.4170 -0.0756
0.4190 0.0999
0.4200 0.1384
0.4220 0.2145
0.4260 0.4140
0.5010 -0.7668
0.5150 -0.4427
0.5190 -0.2756
0.5240 -0.0631
0.5260 0.0475
0.5290 0.1839
0.6030 -0.5451
0.6080 -0.5282
0.6260 -0.0955
0.6280 0.0680
0.6320 0.2191
0.6530 0.7563
0.7240 -0.4235
0.7300 -0.1596
0.7330 -0.0320
0.7350 0.0883
0.7380 0.2280
0.8310 -0.2144
0.8320 -0.1546
0.8340 -0.0583
0.8600 0.6336
0.8620 0.6169
0.9320 -0.5955
0.9330 -0.5314
0.9340 -0.4676
0.9370 -0.2955
0.9410 -0.1334
0.9430 0.1233
0.9460 0.1775
Using each coordinate from the first, I want to find the minimal Euclidean Distance from the second set. How do I do this given that both arrays are of different length? Basically, I will have a final set of X-Y Coordinates (9 in total) that minimize the euclidean distance based on testing each of the first coordinates against every single set in the second.

채택된 답변

Jan
Jan 2016년 11월 18일
편집: Jan 2016년 11월 18일
There are more sophisticated solutions, but what about a simple loop?
X = Observed_Signal_Positive_Inflection_Points_Coordinates;
Y = Positive_Inflection_Points_Coordinates_denoised;
nX = size(X, 1);
Result = zeros(1, nX)
for k = 1:nX
tmp = (X(k, 1) - Y(:, 1)) .^ 2 + (X(k, 2) - Y(:, 2)) .^ 2;
[dummy, Result(k)] = min(tmp, [], 1);
end
Or in R2016b:
tmp = sum((X(k, :) - Y) .^ 2, 2);
Note: You can omit the expensive sqrt(), because it does not change the property of beeing the minimum.
  댓글 수: 2
Osita Onyejekwe
Osita Onyejekwe 2016년 11월 18일
thank you so much. That works. Now can you help me index the coordinates in the second array associated with the minimized distance
dpb
dpb 2016년 11월 18일
That's what the Result above is for each of the values in X.
Or see alternate solution...which also returns them as the second optional output.

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추가 답변 (2개)

dpb
dpb 2016년 11월 18일
Given first/second sets are X,Y, respectively,
[D,I]=pdist2(Y,X,'euclid','smallest',1); % doc pdist2 for details

Greg Dionne
Greg Dionne 2016년 11월 18일
You can also use findsignal if you have a recent copy of the Signal Processing Toolbox, which has some additional normalization and scaling options. (See also example using findsignal)
Even so, I think you'll want to massage your data a little bit to get a good result. The first column of both your observed and denoised move fairly linearly from 0 to 1; the second column looks like it is centered at 0.03 in your observed data, and centered at the origin in your denoised.
Was this an attempt at normalization?

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