# Array data normalization

I have an array of values (between -1.0 and 1.0) that represent intensity (Black to White). I need a way to map the double values from -1.0 through 1.0 to 0 through 255 and back.

More generalized, I have an array of data and I need to map from the min and max value of the data to a supplied min and max. Basic structure should be like:

``````private static int[] NormalizeData(double[] data, int min, int max)
{
var sorted = data.OrderBy(d => d);
double dataMax = sorted.First();
double dataMin = sorted.Last();
int[] ret = new int[data.Length];

for (int i = 0; i < data.Length; i++)
{
ret[i] = (int)data[i];  // Normalization here
}

return ret;
}
``````
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This works:

``````private static int[] NormalizeData(IEnumerable<double> data, int min, int max)
{
double dataMax = data.Max();
double dataMin = data.Min();
double range = dataMax - dataMin;

return data
.Select(d => (d - dataMin) / range)
.Select(n => (int)((1 - n) * min + n * max))
.ToArray();
}
``````

The first select normalizes the input to be from 0 to 1 (0 being minimum, 1 being the maximum). The second select takes that normalized number, and maps it to the new minimum and maximum.

Note that using the LINQ `Min()` and `Max()` functions are faster than sorting the input for larger datasets: O(n) vs. O(n * lg(n)).

Also, if you want to go the other way, then you'll want it to return doubles instead of ints.

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ToArray() does not return doubles –  user396483 Jun 10 '13 at 23:21
``````public static double Scale(this double elementToScale,
double rangeMin, double rangeMax,
double scaledRangeMin, double scaledRangeMax)
{
var scaled = scaledRangeMin + ((elementToScale - rangeMin) * (scaledRangeMax - scaledRangeMin) / (rangeMax - rangeMin));
return scaled;
}
``````

Usage:

``````// double [-1,1] to int [0-255]
int[] integers = doubles.Select(x => x.Scale(-1,1,0,255)).ToArray();

//  int [0-255] to double [-1,1]
double[] doubles = integers.Select(x => ((double)x).Scale(0,255,-1,1)).ToArray();
``````

If you don't know the min and max in advance (`[0-255]` and `[-1,1]` in the example), you can use LINQ `Min()` and `Max()`

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Edit: Scale is more correct than Rebase :) –  digEmAll Mar 21 '11 at 21:58
``````private static int[] NormalizeData(double[] data, int min, int max) {
int[] ret = new int[data.Length];
for (int i = 0; i < data.Length; i++) {
ret[i] = (int)((max * (data[i] + 1)) / 2);
}
return ret;
}

static void Main(string[] args) {
double[] data = { 1.0, -1, 0, -.5, .5 };
int[] normalized = NormalizeData(data, 0, 255);
foreach (var v in normalized) {
Console.WriteLine(v);
}
}
``````
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``````private static int[] NormalizeData(double[] data, int min, int max)
{
var sorted = data.OrderBy(d => d);
double dataMax = sorted.First();
double dataMin = sorted.Last();
int[] ret = new int[data.Length];

double avgIn = (double)((min + max) / 2.0);
double avgOut = (dataMax + dataMin) / 2.0);

for (int i = 0; i < data.Length; i++)
{
ret[i] = (int) Math.Round(avgOut * (data[i] + avgIn) / 2);
}

return ret;
}
``````
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the second and third parameters define the max and min of the return (output) array. What the data should be normalized. In your example, it would be 0 and 255. –  joe_coolish Mar 21 '11 at 21:34
Oh, you want them to be normally distributed. I misunderstood the question. My mistake. –  T.K. Mar 21 '11 at 21:36
Yes, I was unclear :) Sometimes the data won't extend all the way from -1 to 1, so I want to use the data's min and max to define the starting range. And I also want to go back and forth (I know there will be percision lose if I convert to int. The final method will be from `double[]` to `double[]`) so I want to define a distributed max and min, for extensibility :) –  joe_coolish Mar 21 '11 at 21:41
`-1*127+128 = 1` so your result is really 1..255 –  Imre L Mar 21 '11 at 21:43
@joe_coolish I edited my answer - I think this will work towards what you wanted. Sorry about the confusion. –  T.K. Mar 21 '11 at 21:46

Assuming a strictly linear transformation and that you want `dataMin` to map to `min` and `dataMax` to map to `max`:

``````double dataRange = dataMax - dataMin;
int newRange = max - min;

double pct = (data[i] - dataMin) / dataRange;

int newValue = Math.Round(min + (pct * newRange));
``````

That can certainly be optimized, but it shows the basic idea. Basically, you figure out the position (as a percentage) of the value in the original range and then map that percentage to the target range.

Note that if `dataMin` is -0.5 and `dataMax` is 0.5, this might not produce the results that you're looking for because -0.5 will map to 0 and 0.5 will map to 255. If you want things to map exactly as stated, you'll have to define the source range as well.

As an aside, there's no particular reason to sort the items just to get the min and max. You can write:

``````double dataMax = data.Max();
double dataMin = data.Min();
``````
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To be able to normalize your array which in this example acts a vector mathematically you need to define what length the vector is in (how many dimensions). It's not really clear from the example if you want to normalize the entire array taking all elements in the array into account. If so then you calculate the dot product of the array, store the dot products square root as the length of the array. then you divide every term with that length to normalize the array to a length of 1.0.

In the case above you did not actually describe a normalization of the data but a conversion. To solve that you could use something like the following:

``````private static double[] convertToScale(double[] data, double oldMin, double oldMax,double min, double max)
{
double oldDiff = 0 - oldMin;
double oldScale = oldMax - oldMin;
double diff = 0 - min;
double scale = max - min;
int[] ret = new double[data.Length];

for (int i = 0; i < data.Length; i++)
{
double scaledFromZeroToOne = (oldDiff+data[i])/oldScale; // Normalization here [0,1]
double value = (scaledFromZeroToOne*scale)-diff;
ret[i] = value;
}

return ret;
}
``````

This function i believe would solve the problem described above. You can call it like following row:

``````double[] result = convertToScale(input,-1.0,1.0,0,255);
``````

And then cast everything to int if you'd rather have the values represented as ints.

Hope it helps.

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