PIL's Image.transform has a perspective-mode which requires an 8-tuple of data but I can't figure out how to convert let's say a right tilt of 30 degrees to that tuple.

Can anyone explain it?


4 Answers 4


To apply a perspective transformation you first have to know four points in a plane A that will be mapped to four points in a plane B. With those points, you can derive the homographic transform. By doing this, you obtain your 8 coefficients and the transformation can take place.

The site http://xenia.media.mit.edu/~cwren/interpolator/ (mirror: WebArchive), as well as many other texts, describes how those coefficients can be determined. To make things easy, here is a direct implementation according from the mentioned link:

import numpy

def find_coeffs(pa, pb):
    matrix = []
    for p1, p2 in zip(pa, pb):
        matrix.append([p1[0], p1[1], 1, 0, 0, 0, -p2[0]*p1[0], -p2[0]*p1[1]])
        matrix.append([0, 0, 0, p1[0], p1[1], 1, -p2[1]*p1[0], -p2[1]*p1[1]])

    A = numpy.matrix(matrix, dtype=numpy.float)
    B = numpy.array(pb).reshape(8)

    res = numpy.dot(numpy.linalg.inv(A.T * A) * A.T, B)
    return numpy.array(res).reshape(8)

where pb is the four vertices in the current plane, and pa contains four vertices in the resulting plane.

So, suppose we transform an image as in:

import sys
from PIL import Image

img = Image.open(sys.argv[1])
width, height = img.size
m = -0.5
xshift = abs(m) * width
new_width = width + int(round(xshift))
img = img.transform((new_width, height), Image.AFFINE,
        (1, m, -xshift if m > 0 else 0, 0, 1, 0), Image.BICUBIC)

Here is a sample input and output with the code above:

enter image description here enter image description here

We can continue on the last code and perform a perspective transformation to revert the shear:

coeffs = find_coeffs(
        [(0, 0), (256, 0), (256, 256), (0, 256)],
        [(0, 0), (256, 0), (new_width, height), (xshift, height)])

img.transform((width, height), Image.PERSPECTIVE, coeffs,

Resulting in:

enter image description here

You can also have some fun with the destination points:

enter image description here enter image description here

  • 1
    Your answer is very helpful and clear. Thank you. Are you aware of any pure-python implementation of def find_coeffs(pa, pb)? I'm hoping to avoid adding a numpy dependency for a non-central part of my system. I guess I can work it out myself but I'm hoping it is out there somewhere already.
    – KobeJohn
    Commented Dec 4, 2013 at 8:20
  • 1
    It might be too late for your particular project @kobejohn, but I just posted a new answer that has a pure-Python solution for generating the coefficients. Commented Sep 23, 2014 at 21:07
  • 2
    @mmgp The link you provided in your answer is now broken, giving 403.
    – bcdan
    Commented Aug 3, 2015 at 20:43
  • 1
    How do you remove the black that appears in the space that's opened up around the image? I can't tell if I should try to crop the new image, or if there's a simple way to turn the black parts transparent. I'd like to paste the transformed image on top of another image, and I can't have the extra black around the sides. Commented Nov 22, 2015 at 19:07
  • Answered my own question about pasting a transformed image onto another image without the 'transparent' images showing up as black. Check out this question: stackoverflow.com/questions/5324647/… Relevant bit was background.paste(foreground, (0, 0), foreground), needing to pass the pasted image as both first and third param, to set it as a mask Commented Nov 22, 2015 at 19:59

I'm going to hijack this question just a tiny bit because it's the only thing on Google pertaining to perspective transformations in Python. Here is some slightly more general code based on the above which creates a perspective transform matrix and generates a function which will run that transform on arbitrary points:

import numpy as np

def create_perspective_transform_matrix(src, dst):
    """ Creates a perspective transformation matrix which transforms points
        in quadrilateral ``src`` to the corresponding points on quadrilateral

        Will raise a ``np.linalg.LinAlgError`` on invalid input.
    # See:
    # * http://xenia.media.mit.edu/~cwren/interpolator/
    # * http://stackoverflow.com/a/14178717/71522
    in_matrix = []
    for (x, y), (X, Y) in zip(src, dst):
            [x, y, 1, 0, 0, 0, -X * x, -X * y],
            [0, 0, 0, x, y, 1, -Y * x, -Y * y],

    A = np.matrix(in_matrix, dtype=np.float)
    B = np.array(dst).reshape(8)
    af = np.dot(np.linalg.inv(A.T * A) * A.T, B)
    return np.append(np.array(af).reshape(8), 1).reshape((3, 3))

def create_perspective_transform(src, dst, round=False, splat_args=False):
    """ Returns a function which will transform points in quadrilateral
        ``src`` to the corresponding points on quadrilateral ``dst``::

            >>> transform = create_perspective_transform(
            ...     [(0, 0), (10, 0), (10, 10), (0, 10)],
            ...     [(50, 50), (100, 50), (100, 100), (50, 100)],
            ... )
            >>> transform((5, 5))
            (74.99999999999639, 74.999999999999957)

        If ``round`` is ``True`` then points will be rounded to the nearest
        integer and integer values will be returned.

            >>> transform = create_perspective_transform(
            ...     [(0, 0), (10, 0), (10, 10), (0, 10)],
            ...     [(50, 50), (100, 50), (100, 100), (50, 100)],
            ...     round=True,
            ... )
            >>> transform((5, 5))
            (75, 75)

        If ``splat_args`` is ``True`` the function will accept two arguments
        instead of a tuple.

            >>> transform = create_perspective_transform(
            ...     [(0, 0), (10, 0), (10, 10), (0, 10)],
            ...     [(50, 50), (100, 50), (100, 100), (50, 100)],
            ...     splat_args=True,
            ... )
            >>> transform(5, 5)
            (74.99999999999639, 74.999999999999957)

        If the input values yield an invalid transformation matrix an identity
        function will be returned and the ``error`` attribute will be set to a
        description of the error::

            >>> tranform = create_perspective_transform(
            ...     np.zeros((4, 2)),
            ...     np.zeros((4, 2)),
            ... )
            >>> transform((5, 5))
            (5.0, 5.0)
            >>> transform.error
            'invalid input quads (...): Singular matrix
        transform_matrix = create_perspective_transform_matrix(src, dst)
        error = None
    except np.linalg.LinAlgError as e:
        transform_matrix = np.identity(3, dtype=np.float)
        error = "invalid input quads (%s and %s): %s" %(src, dst, e)
        error = error.replace("\n", "")

    to_eval = "def perspective_transform(%s):\n" %(
        splat_args and "*pt" or "pt",
    to_eval += "  res = np.dot(transform_matrix, ((pt[0], ), (pt[1], ), (1, )))\n"
    to_eval += "  res = res / res[2]\n"
    if round:
        to_eval += "  return (int(round(res[0][0])), int(round(res[1][0])))\n"
        to_eval += "  return (res[0][0], res[1][0])\n"
    locals = {
        "transform_matrix": transform_matrix,
    exec to_eval in locals, locals
    res = locals["perspective_transform"]
    res.matrix = transform_matrix
    res.error = error
    return res

The 8 transform coefficients (a, b, c, d, e, f, g, h) correspond to the following transformation:

x' = (ax + by + c) / (gx + hy + 1)
y' = (dx + ey + f) / (gx + hy + 1)

These 8 coefficients can in general be found from solving 8 (linear) equations that define how 4 points on the plane transform (4 points in 2D -> 8 equations), see the answer by mmgp for a code that solves this, although you might find it a tad more accurate to change the line

res = numpy.dot(numpy.linalg.inv(A.T * A) * A.T, B)


res = numpy.linalg.solve(A, B)

i.e., there is no real reason to actually invert the A matrix there, or to multiply it by its transpose and losing a bit of accuracy, in order to solve the equations.

As for your question, for a simple tilt of theta degrees around (x0, y0), the coefficients you are looking for are:

def find_rotation_coeffs(theta, x0, y0):
    ct = cos(theta)
    st = sin(theta)
    return np.array([ct, -st, x0*(1-ct) + y0*st, st, ct, y0*(1-ct)-x0*st,0,0])

And in general any Affine transformation must have (g, h) equal to zero. Hope that helps!


Here is a pure-Python version of generating the transform coefficients (as I've seen this requested by several). I made and used it for making the PyDraw pure-Python image drawing package.

If using it for your own project, note that the calculations requires several advanced matrix operations which means that this function requires another, luckily pure-Python, matrix library called matfunc originally written by Raymond Hettinger and which you can download here or here.

import matfunc as mt

def perspective_coefficients(self, oldplane, newplane):
    Calculates and returns the transform coefficients needed for a perspective 
    transform, ie tilting an image in 3D.
    Note: it is not very obvious how to set the oldplane and newplane arguments
    in order to tilt an image the way one wants. Need to make the arguments more
    user-friendly and handle the oldplane/newplane behind the scenes.
    Some hints on how to do that at http://www.cs.utexas.edu/~fussell/courses/cs384g/lectures/lecture20-Z_buffer_pipeline.pdf

    | **option** | **description**
    | --- | --- 
    | oldplane | a list of four old xy coordinate pairs
    | newplane | four points in the new plane corresponding to the old points

    # first find the transform coefficients, thanks to http://stackoverflow.com/questions/14177744/how-does-perspective-transformation-work-in-pil
    pb,pa = oldplane,newplane
    grid = []
    for p1,p2 in zip(pa, pb):
        grid.append([p1[0], p1[1], 1, 0, 0, 0, -p2[0]*p1[0], -p2[0]*p1[1]])
        grid.append([0, 0, 0, p1[0], p1[1], 1, -p2[1]*p1[0], -p2[1]*p1[1]])

    # then do some matrix magic
    A = mt.Matrix(grid)
    B = mt.Vec([xory for xy in pb for xory in xy])
    AT = A.tr()
    ATA = AT.mmul(A)
    gridinv = ATA.inverse()
    invAT = gridinv.mmul(AT)
    res = invAT.mmul(B)
    a,b,c,d,e,f,g,h = res.flatten()

    # finito
    return a,b,c,d,e,f,g,h
  • That's beautiful! Thanks for leaving a message for me. I finished my app by figuring out how to calculate just basic affine coefficients by myself but I may come back to it in the future and use this for more complex transformations.
    – KobeJohn
    Commented Sep 25, 2014 at 11:24

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