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# Sampling uniformly distributed random points inside a spherical volume

I am looking to be able to generate a random uniform sample of particle locations that fall within a spherical volume.

The image below (courtesy of http://nojhan.free.fr/metah/) shows what I am looking for. This is a slice through the sphere, showing a uniform distribution of points:

This is what I am currently getting:

You can see that there is a cluster of points at the center due to the conversion between spherical and Cartesian coordinates.

The code I am using is:

def new_positions_spherical_coordinates(self):
radius = numpy.random.uniform(0.0,1.0, (self.number_of_particles,1))
theta = numpy.random.uniform(0.,1.,(self.number_of_particles,1))*pi
phi = numpy.arccos(1-2*numpy.random.uniform(0.0,1.,(self.number_of_particles,1)))
x = radius * numpy.sin( theta ) * numpy.cos( phi )
y = radius * numpy.sin( theta ) * numpy.sin( phi )
z = radius * numpy.cos( theta )
return (x,y,z)


Below is some MATLAB code that supposedly creates a uniform spherical sample, which is similar to the equation given by http://nojhan.free.fr/metah. I just can't seem to decipher it or understand what they did.

function X = randsphere(m,n,r)

% This function returns an m by n array, X, in which
% each of the m rows has the n Cartesian coordinates
% of a random point uniformly-distributed over the
% interior of an n-dimensional hypersphere with
% radius r and center at the origin.  The function
% 'randn' is initially used to generate m sets of n
% random variables with independent multivariate
% normal distribution, with mean 0 and variance 1.
% Then the incomplete gamma function, 'gammainc',
% is used to map these points radially to fit in the
% hypersphere of finite radius r with a uniform % spatial distribution.
% Roger Stafford - 12/23/05

X = randn(m,n);
s2 = sum(X.^2,2);
X = X.*repmat(r*(gammainc(s2/2,n/2).^(1/n))./sqrt(s2),1,n);


I would greatly appreciate any suggestions on generating a truly uniform sample from a spherical volume in Python.

There seem to be plenty of examples showing how to sample from a uniform spherical shell, but that seems to be easier an easier problem. The issue has to do with the scaling - there should be fewer particles at a radius of 0.1 than at a radius of 1.0 to generate a uniform sample from the volume of the sphere.

Edit: Fixed and removed the fact I asked for normally and I meant uniform.

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depending on your purposes, it can also be usefull to look at quasi-random numbers instead of (software) random numbers – Matthias Dec 1 '15 at 12:02

## 6 Answers

While I prefer the discarding method for spheres, for completeness I offer the exact solution.

In spherical coordinates, taking advantage of the sampling rule:

phi = random(0,2pi)
costheta = random(-1,1)
u = random(0,1)

theta = arccos( costheta )
r = R * cuberoot( u )


now you have a (r, theta, phi) group which can be transformed to (x, y, z) in the usual way

x = r * sin( theta) * cos( phi )
y = r * sin( theta) * sin( phi )
z = r * cos( theta )

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I feel like an idiot now. All I had to do was take the cube root of the radius? Perfect thanks for your patience and continuous part in the discussion :) – Tim McJilton Mar 23 '11 at 17:03
@Tim: As I said in the comments to Jim's answer, most books prefer the discard method for spheres. Even with hardware support cube roots take a few cycles, and the trig needed to get back to Cartesian coordinates cost some time too. Also note that I've hidden a second application of this method by drawing costheta uniformly. – dmckee Mar 23 '11 at 17:06
Ah okay I get it. The cost of running the cubed root for all of them is more than the cost of everything thrown out. I think I will do it both ways and allow me to decide on use of the function. Anyways thank you again for your help! – Tim McJilton Mar 23 '11 at 17:26

Generate a set of points uniformly distributed within a cube, then discard the ones whose distance from the center exceeds the radius of the desired sphere.

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Good call. Discarding is fairly efficient for spheres, and is recommended in many texts as being faster than the transform needed to sample exactly. – dmckee Mar 23 '11 at 16:29
I thought of that idea, but that would lose ~50% of the total points created. So to create 16,000 particles it would create ~32,000. Since Area of cube is r^3 and sphere is 4/3*pi*(r/2)^3 = so the ratio = ~4/8 = .5 – Tim McJilton Mar 23 '11 at 16:31
This wouldn't result a normal distribution, which is what @Tim was asking for. Normal distribution isn't the same as uniform distribution. – juanchopanza Mar 23 '11 at 16:40
Oh @Juanchopanza I messed up. I meant uniform. I am going to go fix that now. – Tim McJilton Mar 23 '11 at 16:42
@Tim McJilton: I just figured out what you meant. The cube solution is good! If you are concerned about efficiency, you can try profiling cube-discard vs. transform. – juanchopanza Mar 23 '11 at 16:44

There is a brilliant way to generate uniformly points on sphere in n-dimensional space, and you have pointed this in your question (I mean MATLAB code).

Why does it work? The answer is: let us look at the probability density of n-dimensional normal distribution. It is equal (up to constant)

exp(-x_1*x_1/2) *exp(-x_2*x_2/2)... = exp(-r*r/2), so it doesn't depend on the direction, only on the distance! This means, after you normalize vector, the resulting distribution's density will be constant across the sphere.

This method should be definitely preferred due to it's simplicity, generality and efficiency (and beauty). The code, which generates 1000 events on the sphere in three dimensions:

size = 1000
n = 3 # or any positive integer
x = numpy.random.normal(size=(size, n))
x /= numpy.linalg.norm(x, axis=1)[:, numpy.newaxis]


BTW, the good link to look at: http://www-alg.ist.hokudai.ac.jp/~jan/randsphere.pdf

As for having uniform distribution within a sphere, instead of normalizing a vector, you should multiply vercor by some f(r): f(r)*r is distributed with density proportional to r^n on [0,1], which was done in the code you posted

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Would this be uniform enough for your purposes?

In []: p= 2* rand(3, 1e4)- 1
In []: p= p[:, sum(p* p, 0)** .5<= 1]
In []: p.shape
Out[]: (3, 5216)


A slice of it

In []: plot(p[0], p[2], '.')


looks like:

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This is the same thing that Jim Lewis suggested right? Create a uniform cube and toss out anything not in the sphere? – Tim McJilton Mar 23 '11 at 16:34
@Tim McJilton: Yes, I was typing it while Jim's answer come in and since it's code I'll decided to publish it anyway. Anyway nothing suggested in your question that generating more points actually needed would be someway problematic. Care to elaborate more? Thanks – eat Mar 23 '11 at 16:39
I am running a simulation of 16,000 + stars with both velocity and and position locations which I want to be uniform. I was hoping to have a way where I can set the amount of points to keep since I need exactly 16,000 or whatnot. Your way would work and I guess I could keep adding points 1 by 1 till we have 16,000 enclosed. – Tim McJilton Mar 23 '11 at 16:47
@Tim McJilton: FWIW, in my (very) modest machine generating 1e5 3d uniform random points and discarding outsiders (yielding to some 5.3e4 points), takes some 35 ms. If this kind of performance is not applicable to you, please give us more details. Thanks – eat Mar 23 '11 at 17:02
@Tim McJilton: now seeing dmckee's answer I think it's the correct answer for this situation (exact number of points in sphere). However in general it does not scale quite so easily to higher dimensions (, if that ever matters). Thanks – eat Mar 23 '11 at 17:27

You can just generate random points in spherical coordinates (assuming that you are working in 3D): S(r, θ, φ ), where r ∈ [0, R), θ ∈ [0, π ], φ ∈ [0, 2π ), where R is the radius of your sphere. This would also allow you directly control how many points are generated (i.e. you don't need to discard any points).

To compensate for the loss of density with the radius, you would generate the radial coordinate following a power law distribution (see dmckee's answer for an explanation on how to do this).

If your code needs (x,y,z) (i.e. cartesian) coordinates, you would then just convert the randomly generated points in spherical to cartesian coordinates as explained here.

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That is what my code is doing. The problem happens when you convert it to polar co-ordinates it has an even amount of particles at radius R, as there at radius r < R which causes the center to be more dense than the edges – Tim McJilton Mar 23 '11 at 16:46
To make this work, you must draw the radial position non-uniformaly. Because the volume element is r^2 dr d\phi d(cos\theta). And this involves extracting a cube root and one inverse cosine, so it tend to be slower than the discarding procedure. – dmckee Mar 23 '11 at 16:48
Got it. Then discarding points is probably easier. If you still want to do it without discarding points, you need to generate the radial coordinate following a power law distribution. Unfortunately, sampling from non-trivial distributions is not easy, but if you are still interested, see the Metropolis-Hastings algorithm for a general method (any other MCMC method would also work). – Amelio Vazquez-Reina Mar 23 '11 at 16:52
Do not, I repeat not use Metropolis for this! Sampling power law distributions is easy, just not trivial. – dmckee Mar 23 '11 at 16:56
@AmV: It is sometimes called the Fundamental Law of Sampling. I discuss it in other contexts in the two links in my answer here. You normalize your PDF, integrate then invert it, and use the resulting function to transform values drawn uniformly over [0,1). In this case it comes down to taking a cube root. – dmckee Mar 23 '11 at 17:03

Normed gaussian 3d vector is uniformly distributed on sphere, see http://mathworld.wolfram.com/SpherePointPicking.html

For example:

N = 1000
v = numpy.random.uniform(size=(3,N))
vn = v / numpy.sqrt(numpy.sum(v**2, 0))

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