We have a gazillion spatial coordinates (x, y and z) representing atoms in 3d space, and I'm constructing a function that will translate these points to a new coordinate system. Shifting the coordinates to an arbitrary origin is simple, but I can't wrap my head around the next step: 3d point rotation calculations. In other words, I'm trying to translate the points from (x, y, z) to (x', y', z'), where x', y' and z' are in terms of i', j' and k', the new axis vectors I'm making with the help of the euclid python module.

I think all I need is a euclid quaternion to do this, i.e.

>>> q * Vector3(x, y, z)
Vector3(x', y', z')

but to make THAT i believe I need a rotation axis vector and an angle of rotation. But I have no idea how to calculate these from i', j' and k'. This seems like a simple procedure to code from scratch, but I suspect something like this requires linear algebra to figure out on my own. Many thanks for a nudge in the right direction.

  • just to clarify, you want a linear transformation from one euclidean 3-space to another euclidean 3-space? Feb 2, 2011 at 3:11
  • 3
    Here's a hint: What would the vectors (0, 0, 1), (0, 1, 0) and (1, 0, 0) be translated to?
    – Anon.
    Feb 2, 2011 at 3:13
  • 2
    Rotation matrix is the best choice here. The rotation matrix relating coordinate frames is easy to obtain and efficient to apply. Obtaining and applying a quaternion here would essentially require converting from rotation matrix and then converting back to rotation matrix. Obviously it's better to just use the rotation matrix. Quaternions have their strengths elsewhere. Their key strengths are that they consist of only 4 numbers, can be composed and applied without trig, have simple constraints (unit magnitude), and are well suited for interpolation. Apr 10, 2016 at 9:15

3 Answers 3


Using quaternions to represent rotation isn't difficult from an algebraic point of view. Personally, I find it hard to reason visually about quaternions, but the formulas involved in using them for rotations are not overly complicated. I'll provide a basic set of reference functions here.1 (See also this lovely answer by hosolmaz, in which he packages these together to create a handy Quaternion class.)

You can think of a quaternion (for our purposes) as a scalar plus a 3-d vector -- abstractly, w + xi + yj + zk, here represented by an ordinary tuple (w, x, y, z). The space of 3-d rotations is represented in full by a sub-space of the quaternions, the space of unit quaternions, so you want to make sure that your quaternions are normalized. You can do so in just the way you would normalize any 4-vector (i.e. magnitude should be close to 1; if it isn't, scale down the values by the magnitude):

def normalize(v, tolerance=0.00001):
    mag2 = sum(n * n for n in v)
    if abs(mag2 - 1.0) > tolerance:
        mag = sqrt(mag2)
        v = tuple(n / mag for n in v)
    return v

Please note that for simplicity, the following functions assume that quaternion values are already normalized. In practice, you'll need to renormalize them from time to time, but the best way to deal with that will depend on the problem domain. These functions provide just the very basics, for reference purposes only.

Every rotation is represented by a unit quaternion, and concatenations of rotations correspond to multiplications of unit quaternions. The formula2 for this is as follows:

def q_mult(q1, q2):
    w1, x1, y1, z1 = q1
    w2, x2, y2, z2 = q2
    w = w1 * w2 - x1 * x2 - y1 * y2 - z1 * z2
    x = w1 * x2 + x1 * w2 + y1 * z2 - z1 * y2
    y = w1 * y2 + y1 * w2 + z1 * x2 - x1 * z2
    z = w1 * z2 + z1 * w2 + x1 * y2 - y1 * x2
    return w, x, y, z

To rotate a vector by a quaternion, you need the quaternion's conjugate too:

def q_conjugate(q):
    w, x, y, z = q
    return (w, -x, -y, -z)

Quaternion-vector multiplication is then a matter of converting your vector into a quaternion (by setting w = 0 and leaving x, y, and z the same) and then multiplying q * v * q_conjugate(q):

def qv_mult(q1, v1):
    q2 = (0.0,) + v1
    return q_mult(q_mult(q1, q2), q_conjugate(q1))[1:]

Finally, you need to know how to convert from axis-angle rotations to quaternions and back. This is also surprisingly straightforward. It makes sense to "sanitize" input and output here by calling normalize.

def axisangle_to_q(v, theta):
    v = normalize(v)
    x, y, z = v
    theta /= 2
    w = cos(theta)
    x = x * sin(theta)
    y = y * sin(theta)
    z = z * sin(theta)
    return w, x, y, z

And back:

def q_to_axisangle(q):
    w, v = q[0], q[1:]
    theta = acos(w) * 2.0
    return normalize(v), theta

Here's a quick usage example. A sequence of 90-degree rotations about the x, y, and z axes will return a vector on the y axis to its original position. This code performs those rotations:

x_axis_unit = (1, 0, 0)
y_axis_unit = (0, 1, 0)
z_axis_unit = (0, 0, 1)
r1 = axisangle_to_q(x_axis_unit, numpy.pi / 2)
r2 = axisangle_to_q(y_axis_unit, numpy.pi / 2)
r3 = axisangle_to_q(z_axis_unit, numpy.pi / 2)

v = qv_mult(r1, y_axis_unit)
v = qv_mult(r2, v)
v = qv_mult(r3, v)

print v
# output: (0.0, 1.0, 2.220446049250313e-16)

Keep in mind that this sequence of rotations won't return all vectors to the same position; for example, for a vector on the x axis, it will correspond to a 90 degree rotation about the y axis. (Think of the right-hand-rule here; a positive rotation about the y axis pushes a vector on the x axis into the negative z region.)

v = qv_mult(r1, x_axis_unit)
v = qv_mult(r2, v)
v = qv_mult(r3, v)

print v
# output: (4.930380657631324e-32, 2.220446049250313e-16, -1.0)

As always, please let me know if you find any problems here.

1. These are adapted from an OpenGL tutorial archived here.

2. The quaternion multiplication formula looks like a horrible rat's nest at first, but the derivation is easy, albeit tedious. Working with pencil and paper, you can represent the two quaternions like so: w + xi + yj + zk. Then note that ii = jj = kk = -1; that ij = k, jk = i, ki = j; and that ji = -k, kj = -i, ik = -j. Finally, multiply the two quaternions, distributing out the terms and rearranging them based on the results of each of the 16 multiplications. This helps to illustrate why you can use quaternions to represent rotation; the last six identities follow the right-hand rule, creating bijections between rotations from i to j and rotations around k, and so on.

If you do this, you'll see that the identity ii = jj = kk = -1 explains the last three terms in the w formula; that jk = i explains the third term in the x formula; and that kj = -i explains the fourth term in the x formula. The y and z formulas work the same way. The remaining terms are all examples of ordinary scalar multiplication.

  • 1
    I hope you don't mind, I fixed a couple of code typos (see edits). In addition, for qv_mult to be useful it should return a vector, not a quaternion so I've dropped the first component (which is zero anyways!).
    – Hooked
    Oct 11, 2012 at 20:06
  • I think the first line of qv_mult should be q1 = normalize(q1) (not v1)? Mar 9, 2015 at 0:53
  • 4
    A "quaternion kit" for python - great! I wonder if quaternions will some day become a standard dtype in numpy: github.com/moble/quaternion/blob/master/README.md
    – uhoh
    Dec 13, 2016 at 7:45
  • 1
    @uhoh, they keep moving that page -- I've had to update the link three times now, and I think I'm going to give up. I will let you know if I find it though.
    – senderle
    Dec 13, 2016 at 19:50
  • 1
    Found it at archive.org
    – trapicki
    May 31, 2017 at 21:41

This question and the answer given by @senderle really helped me with one of my projects. The answer is minimal and covers the core of most quaternion computations that one might need to perform.

For my own project, I found it tedious to have separate functions for all the operations and import them one by one every time I need one, so I implemented an object oriented version.


import numpy as np
from math import sin, cos, acos, sqrt

def normalize(v, tolerance=0.00001):
    mag2 = sum(n * n for n in v)
    if abs(mag2 - 1.0) > tolerance:
        mag = sqrt(mag2)
        v = tuple(n / mag for n in v)
    return np.array(v)

class Quaternion:

    def from_axisangle(theta, v):
        theta = theta
        v = normalize(v)

        new_quaternion = Quaternion()
        new_quaternion._axisangle_to_q(theta, v)
        return new_quaternion

    def from_value(value):
        new_quaternion = Quaternion()
        new_quaternion._val = value
        return new_quaternion

    def _axisangle_to_q(self, theta, v):
        x = v[0]
        y = v[1]
        z = v[2]

        w = cos(theta/2.)
        x = x * sin(theta/2.)
        y = y * sin(theta/2.)
        z = z * sin(theta/2.)

        self._val = np.array([w, x, y, z])

    def __mul__(self, b):

        if isinstance(b, Quaternion):
            return self._multiply_with_quaternion(b)
        elif isinstance(b, (list, tuple, np.ndarray)):
            if len(b) != 3:
                raise Exception(f"Input vector has invalid length {len(b)}")
            return self._multiply_with_vector(b)
            raise Exception(f"Multiplication with unknown type {type(b)}")

    def _multiply_with_quaternion(self, q2):
        w1, x1, y1, z1 = self._val
        w2, x2, y2, z2 = q2._val
        w = w1 * w2 - x1 * x2 - y1 * y2 - z1 * z2
        x = w1 * x2 + x1 * w2 + y1 * z2 - z1 * y2
        y = w1 * y2 + y1 * w2 + z1 * x2 - x1 * z2
        z = w1 * z2 + z1 * w2 + x1 * y2 - y1 * x2

        result = Quaternion.from_value(np.array((w, x, y, z)))
        return result

    def _multiply_with_vector(self, v):
        q2 = Quaternion.from_value(np.append((0.0), v))
        return (self * q2 * self.get_conjugate())._val[1:]

    def get_conjugate(self):
        w, x, y, z = self._val
        result = Quaternion.from_value(np.array((w, -x, -y, -z)))
        return result

    def __repr__(self):
        theta, v = self.get_axisangle()
        return f"((%.6f; %.6f, %.6f, %.6f))"%(theta, v[0], v[1], v[2])

    def get_axisangle(self):
        w, v = self._val[0], self._val[1:]
        theta = acos(w) * 2.0

        return theta, normalize(v)

    def tolist(self):
        return self._val.tolist()

    def vector_norm(self):
        w, v = self.get_axisangle()
        return np.linalg.norm(v)

In this version, one can just use the overloaded operators for quaternion-quaternion and quaternion-vector multiplication

from quaternion import Quaternion
import numpy as np

x_axis_unit = (1, 0, 0)
y_axis_unit = (0, 1, 0)
z_axis_unit = (0, 0, 1)

r1 = Quaternion.from_axisangle(np.pi / 2, x_axis_unit)
r2 = Quaternion.from_axisangle(np.pi / 2, y_axis_unit)
r3 = Quaternion.from_axisangle(np.pi / 2, z_axis_unit)

# Quaternion - vector multiplication
v = r1 * y_axis_unit
v = r2 * v
v = r3 * v


# Quaternion - quaternion multiplication
r_total = r3 * r2 * r1
v = r_total * y_axis_unit


I did not intend to implement a full-fledged quaternion module, so this is again for instructional purposes, as in @senderle's great answer. I hope this helps out to those who want to understand and try out new things with quaternions.


Note that the inversion of matrix is not that trivial at all! Firstly, all n (where n is the dimension of your space) points must be in general position (i.e. no individual point can be expressed as a linear combination of rest of the points [caveat: this may seem to be a simple requirement indeed, but in the realm of numerical linear algebra, it's nontrivial; final decison wheter such configuration really exist or not, will eventually be based on the 'actual domain' specific knowledge]).

Also the 'correspondence' of the new and old points may not be exact (and then you should utilize the best possible approximator of the 'true correspondence', i.e.:). Pseudo inverse (instead of trying to utilize the plain inverse) is recommend allways when your lib provides it.

The pseudo inverse has the advantage that you'll be able to use more points for your transformation, hence increasing the probability that at least n points will be in general position.

Here is an example, rotation of unit square 90 deg. ccw in 2D (but obviously this determination works in any dim), with numpy:

In []: P=  matrix([[0, 0, 1, 1],
                   [0, 1, 1, 0]])
In []: Pn= matrix([[0, -1, -1, 0],
                   [0,  0,  1, 1]])
In []: T= Pn* pinv(P)
In []: (T* P).round()
matrix([[ 0., -1., -1.,  0.],
        [ 0.,  0.,  1.,  1.]])

P.S. numpy is also fast. Transformation of 1 million points in my modest computer:

In []: P= matrix(rand(2, 1e6))
In []: %timeit T* P
10 loops, best of 3: 37.7 ms per loop
  • thank you for this, numpy looks like a very attractive alternative to euclid. my main roadblock was simply figuring out the math without a background in linear algebra. [xyz]*[i'j'k']^-1=[x'y'z'] was the missing part. Feb 2, 2011 at 20:02

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.