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Home/ Questions/Q 6318695
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Editorial Team
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Editorial Team
Asked: May 24, 20262026-05-24T15:40:14+00:00 2026-05-24T15:40:14+00:00

I’m trying to implement the Minimum Distance Algorithm for image classification using GDAL and

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I’m trying to implement the Minimum Distance Algorithm for image classification using GDAL and Python. After calculating the mean pixel-value of the sample areas and storing them into a list of arrays (“sample_array”), I read the image into an array called “values”. With the following code I loop through this array:

values = valBD.ReadAsArray()

# loop through pixel columns
for X in range(0,XSize):

    # loop thorugh pixel lines
    for Y in range (0, YSize):

        # initialize variables
        minDist = 9999
        # get minimum distance
        for iSample in range (0, sample_count):
            # dist = calc_distance(values[jPixel, iPixel], sample_array[iSample])

            # computing minimum distance
            iPixelVal = values[Y, X]
            mean = sample_array[iSample]
            dist = math.sqrt((iPixelVal - mean) * (iPixelVal - mean)) # only for testing

            if dist < minDist:
                minDist = dist
                values[Y, X] = iSample

classBD.WriteArray(values, xoff=0, yoff=0)

This procedure takes very long for big images. That’s why I want to ask if somebody knows a faster method. I don’t know much about access-speed of different variables in python. Or maybe someone knows a libary I could use.
Thanks in advance,
Mario

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1 Answer

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  1. Editorial Team
    Editorial Team
    2026-05-24T15:40:14+00:00Added an answer on May 24, 2026 at 3:40 pm

    You should definitely be using NumPy. I work with some pretty large raster datasets and NumPy burns through them. On my machine, with the code below there’s no noticeable delay for a 1000 x 1000 array. An explanation of how this works follows the code.

    import numpy as np
    from scipy.spatial.distance import cdist
    
    # some starter data
    dim = (1000,1000)
    values = np.random.randint(0, 10, dim)
    
    # cdist will want 'samples' as a 2-d array
    samples = np.array([1, 2, 3]).reshape(-1, 1)
    
    # this could be a one-liner
    # 'values' must have the same number of columns as 'samples'
    mins = cdist(values.reshape(-1, 1), samples)
    outvalues = mins.argmin(axis=1).reshape(dim)
    

    cdist() calculates the “distance” from each element in values to each of the elements in samples. This generates a 1,000,000 x 3 array, where each row n has the distance from pixel nin the original array to each of the sample values [1, 2, 3]. argmin(axis=1) gives you the index of the minimum value along each row, which is what you want. A quick reshape gives you the rectangular format you’d expect for an image.

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