**Contents**

## Möller-Trumbore algorithm

The Möller-Trumbore (or MT for the reminding of this lesson) algorithm is a fast ray-triangle intersection algorithm which was introduced in 1997 by Tomas Möller and Ben Trumbore in a paper titled "Fast, Minimum Storage Ray/Triangle Intersection". It is still considered today a fast algorithm which is often used in benchmarks to compare performances of other methods although, a fair comparison of ray-triangle intersection algorithms is actually a difficult thing to do, because speed can depends on many factors such as the way algorithms are implemented, the type of test scene that is used, whether values are precomputed, etc.

The Möller-Trumbore algorithm takes advantage of the parameterization of P, the intersection point in terms of barycentric coordinates (which we talked about in the previous chapter). We learned in the previous chapter to compute P, the intersection point, using the following equations:

$$P = wA + uB + vC$$We also learned that w=1-u-v thus we can write:

$$P = (1 - u - v)A + uB + vC$$If we develop, we get (equation 1):

$$P=A - uA - vA + uB + vC = A + u(B - A) + v(C - A)$$Note that (B-A) and (C-A) are the edges AB and AC of the triangle ABC. The intersection P can also be written using the ray's parametric equation (equation 2):

$$P=O+tD$$where \(t\) is the distance from the ray's origin to the intersection P. If we replace P in equation 1 with the ray's equation we get (equation 3):

$$ \begin{array}{l} O+tD & = & A + u(B - A) + v(C - A)\\ O-A & = & -tD+u(B-A)+v(C-A) \end{array} $$On the left side of the equal sign, we have three unknowns (t, u, v) multiplied to three known terms (B-A, C-A, D). We can rearrange these terms and present equation 3 using the following notation (equation 4):

$$ \begin{bmatrix} -D & (B-A) & (C-A) \end{bmatrix} \begin{bmatrix} t\\u\\v \end{bmatrix} =O-A $$The left side of the equation has been rearranged into a row-column vector multiplication. This is the simplest possible form of matrix multiplication. You just take the first element of the raw matrix (-D, B-A, C-A) and multiply it by the first element of the column vector (\(t\), \(u\), \(v\)). Then you add the second element of the raw matrix multiplied by the second element of the column vector. Then finally add the third element of the raw matrix multiplied by the third element of the column vector (which gives you equation 3 again).

In equation 3, the term on the right side of the equal sign is a vector (O-A). B-A, C-A and D are vectors as well, and \(t\), \(u\), and \(v\) (unknown) are scalars. This equation is about vectors. It combines three vectors in quantities defined by t, u and v and it gives another vector as a result of this operation (be aware that in their paper, Möller and Trumbore use the term x-, y- and z-axis instead of \(t\), \(u\) and \(v\) when they explain the geometrical meaning of this equation).

Let's imagine that you have a point P inside the triangle ABC. If we transform the triangle in any ways (for example if we translate the triangle, rotate it or scale it), the coordinates of point P expressed in the three-dimensional Cartesian coordinate system x, y, z will change. On the other hand, if you express the position of P using barycentric coordinates, transformations applied to the triangle will not affect the intersection point barycentric coordinates. If the triangle is rotated, scaled, stretched or translated, the coordinates u, v defining the position of P with respect to vertices A, B and C will not change (see figure 1). The MT algorithm is taking advantage of this property. Indeed, what the authors do, is to define a new coordinate system where the coordinates of P are not defined in terms of x, y and z but in terms of \(u\) and \(v\). We can very well define a point in different coordinate systems (x, y, z space or u, v space) which is exactly what you do if you use meters instead of inches to express the distance between two points. Your height doesn't change regardless of the units you use to measure it. Now, the \(u\) and \(v\) coordinates as we learned, can't be greater than 1 nor lower than 0. Their sum can't be greater than 1 either (u+v <= 1). In fact, they express coordinates of points defined inside a **unit triangle** (this is the triangle defined in u, v space by the vertices (0, 0), (1, 0), (0, 1) as shown in figure 1). Let's summarize. What do we have so far? We have re-interpreted the three-dimensional x, y, z position of point P in terms of \(u\) and \(v\) barycentric coordinates going from one **parameter space** to another: from xyz-space to uv-space. We have also learned that points defined in uv-space are inside a unit triangle.

Equation 3 (or 4, they are identical) has three unknowns: \(u\), \(v\) and \(t\). Geometrically, we have just explained the meaning of \(u\) and \(v\). But what about \(t\)? Simple: we will consider that \(t\) is the third axis of the \(u\) and \(v\) coordinate system we just introduced. We now have a coordinate system defined by three axes, \(u\), \(v\) and \(t\). But again, geometrically let's explain what it means. In fact we know that \(t\) expresses the distance from the ray origin to P, the intersection point. If you look at figure 1, we can see that we have created a coordinate system that allows us to fully express the position of the intersection P in terms of barycentric coordinates and distance from the ray origin to that point on the triangle.

Möller and Trumbore explain that the first part of equation 4 (the term O-A) can be looked at as a transformation moving the triangle from its original world space position to the origin (the first vertex of the triangle coincides with the origin). The other side of the equation has for effect to transform the intersection point from x, y, z space to "tuv-space" as explained above.

## Cramer's Rule

What we have to do now is solve this equation which has three unknowns: \(t\), \(u\) and \(v\). To solve equation 4, Möller and Trumbore use a technique which is known in mathematics, as the **Cramer's rule**. Cramer's rule gives the solution to a system of linear equations in terms of determinant. It says that if the multiplication of a matrix M (three numbers disposed in a horizontal manner) by a column vector X (three number disposed in vertical manner) is equal to a column vector C, then it is possible to find Xi (the ith element of the column vector X) by dividing the **determinant** of Mi by the determinant of M. Mi is the matrix formed by replacing the ith column of M by the column vector C. If you are unfamiliar with the Cramer's rule, you can find it explained in the grey box below.

Imaging we have to solve for x y and z using this set of linear equations:

$$ \begin{array}{l} 2x + 1y + 1z = 3 \\ 1x - 1y - 1z = 0 \\ 1x + 2y + 1z = 0 \end{array} $$We can rewrite these equations using a matrix representation, where the coefficients of the equations on the left will become the coefficients of the matrix M and the numbers on the right of the equal sign will become the matrix C's coefficient:

$$M=\left[\begin{array}{rrr}2 & 1 & 1\\1 & -1 & -1\\1 & 2 & 1\end{array}\right]$$ $$C=\left[\begin{array}{ccc}\color{red}{3}\\\color{red}{0}\\\color{red}{0}\end{array}\right]$$ $$M*\begin{bmatrix}x \\ y \\ z \end{bmatrix} = C$$By replacing the first column in M with C we can create a matrix Mx:

$$ M_x=\left[ \begin{array}{rrr}\color{\red}{3} & 1 & 1 \\ \color{\red}{0} & -1 & -1 \\ \color{\red}{0} & 2 & 1\end{array} \right] $$Similarly, we can create My and Mz:

$$ \begin{array}{l} M_y=\left[ \begin{array}{rrr}2 & \color{\red}{3} & 1 \\ 1 & \color{\red}{0} & -1 \\ 1 & \color{\red}{0} & 1\end{array} \right]\\ M_z=\left[ \begin{array}{rrr}2 & 1 & \color{\red}{3} \\ 1 & -1 & \color{\red}{0} \\ 1 & 2 & \color{\red}{0}\end{array} \right] \end{array} $$Evaluating each determinant, we get:

$$ \begin{array}{l} M=\left| \begin{array}{rrr} 2 & 1 & 1\\1 & -1 & -1\\1 & 2 & 1 \end{array} \right| = (-2)+(-1)+(2)-(-1)-(-4)-(1)=3\\ M_x=\left| \begin{array}{rrr} \color{\red}{3} & 1 & 1 \\ \color{\red}{0} & -1 & -1 \\ \color{\red}{0} & 2 & 1 \end{array} \right| = (-3) + (0) + (0) - (0)-(-6) - (0) = 3\\ M_y=\left| \begin{array}{rrr} 2 & \color{\red}{3} & 1 \\ 1 & \color{\red}{0} & -1 \\ 1 & \color{\red}{0} & 1 \end{array} \right| = (0) + (-3) + (0) - (0) - (0) -(3) = -6\\ M_z=\left| \begin{array}{rrr} 2 & 1 & \color{\red}{3} \\ 1 & -1 & \color{\red}{0} \\ 1 & 2 & \color{\red}{0} \end{array} \right| = (0) + (0) + (6) -(-3) - (0) - (0) = 9\\ \end{array} $$Remember that the determinant of a 3x3 matrix:

$$\begin{vmatrix} a & b & c\\d & e & f\\g & h & i \end{vmatrix},$$ has the value: $$(aei+bfg+cdh)-(ceg+bdi+afh).$$Cramer's rule says that x = Mx / M, y = My / M and z = Mz / M. That is:

$$ \begin{array}{l} x = \dfrac{3}{3} = 1\\ y = \dfrac{-6}{3}= -2\\ z = \dfrac{9}{3} = 3 \end{array} $$In linear algebra, the determinant is denoted by two vertical bars. And it reads: |A B C| is the determinant of the matrix having A B & C as its columns. You can easily see by now that the matrix M is [-D, B - A, C - A], X is [t, u, v] and C is (O-A) in our system of linear equations. We are interested in finding values for \(t\), \(u\), and \(v\). If we use Cramer's rule, we get (equation 5):

$$ \left[ \begin{array}{r} t \\ u \\ v\end{array}\right] = {1 \over \left[ \left| \begin{array}{r} -D & E_1 & E_2 \end{array}\right| \right]} \left[ \begin{array}{c} \left| \begin{array}{c} T & E_1 & E_2\end{array}\right| \\ \left| \begin{array}{c} -D & T & E_2\end{array}\right| \\ \left| \begin{array}{c} -D & E_1 & T\end{array}\right| \\ \end{array}\right], $$where for brevity we denote \(T = O - A\) \(E_1 = B - A\) and \(E_2 = C - A\). The next step is to find a value for these four determinants. In lesson on Geometry, we explained that the determinant of a 1x3 matrix |A B C| has the value:

$$|A B C| = -(A \times C) \cdot B = -(C \times B) \cdot A.$$ The determinant (of a 3x3 matrix) is nothing else than a**scalar triple product**which is a combination of a cross and a dot product. Therefore we can rewrite equation 5 as: $$ \left[ \begin{array}{r} t \\ u \\ v\end{array}\right] = {1 \over {(D \times E_2) \cdot E_1}} \left[ \begin{array}{c} (T \times E_1) \cdot E_2 \\ (D \times E_2) \cdot T \\ (T \times E_1) \cdot D \end{array}\right] = = {1 \over {P \cdot E_1}} \left[ \begin{array}{c} Q \cdot E_2 \\ P \cdot T \\ Q \cdot D \end{array}\right], $$

where \(P=(D \times E_2)\) and \(Q=(T \times E_1)\). As you can see it is easy for us now to find the values \(t\), \(u\) and \(v\). We can get them with cross and dot products between known variables: the vertices of the triangle, the origin and the ray direction.

The "scalar triple product" is defined as the dot product of one of the vectors with the cross product of the other two:

$$\mathbf{a}\cdot(\mathbf{b}\times \mathbf{c})$$The scalar triple product can also be understood as the determinant of the |3|x|3| matrix having the three vectors either as its rows or its columns:

$$ \mathbf{a}\cdot(\mathbf{b}\times \mathbf{c}) = \det \begin{bmatrix} a_1 & a_2 & a_3 \\ b_1 & b_2 & b_3 \\ c_1 & c_2 & c_3 \\ \end{bmatrix}. $$## Implementation

Implementing the MT algorithm is straightforward. The scalar triple product (AxB).C is the same as A.(BxC). Therefore the denominator (DxE2).E1 in equation 5 is the same as D.(E1xE2). The cross product of E1 and E2 gives the normal of the triangle. And we know that if the dot product of the ray direction D and the triangle normal is 0, the triangle and the ray are parallel (and therefore there is no intersection). Remember as well that the user might want to cull (discard) back-facing triangles. If the triangle is front-facing the determinant is positive otherwise it is negative. In the code we will first compute this determinant. If the result is negative and the triangle single sided or close to 0, there is no intersection. If the triangle is double sided we will need to check if the determinant is close to 0 which is a bit more complex than in the previous case as the value is signed.

The next steps are simple. We first compute u and reject the triangle if u is either lower than 0 or greater than 1. If we successfully pass the computation of \(u\), then we compute \(v\) and apply the same tests (there's no intersection if \(v\) is lower than 0 or greater than 1 and if u+v is greater than 1). At this point we know the ray intersects the triangle and we can compute \(t\).

Note that when the ray and the normal of the triangle are facing each other (they go in opposite directions), the determinant is positive (greater than 0) as showed in the adjacent figure (top). On the other hand, when the ray hits the triangle from "behind" (the ray and the normal points in the same direction), the determinant is negative (adjacent figure, bottom). The figure on the side illustrates these two possible cases. The numbers are simple enough that cross and dot products between vectors are straighforward to compute. The coordinates of edge2 are (1,0,0) and the cross product between the ray direction (0,-1,0) and edge2 gives pvec. Remember that the cross product of two vectors is given by:

$$\begin{array}{l} x = v1.y v2.z - v1.z v2.y\\y = v1.z v2.x - v1.x v2.z\\z = v1.x v2.y - v1.y v2.x\end{array}$$Thus:

$$ \begin{array}{l} pvec.z &=& dir.x * edge.y - dir.y * edge.x \\ &=& 0*0 -(-1 * 1) = 1, \end{array} $$and pvec = (0,0,1). The dot product between this vector and edge1 (which is the determinant) is indeed positive. When the ray has direction (0,1,0) when then get:

$$pvec.z = 0*0 - (1 * 1) = -1,$$and pvec = (0,0,-1). The determinant is in this case negative.

In the original implementation of the algorithm (which you can find in the original paper, see reference below), the code can be either compiled to handle culling or simply ignore it. When culling is active, rays intersecting triangles from behind will be discarded. This can easily be checked for, using the sign of the determinant. If culling is active and the determinant is lower than 0, then the ray doesn't intersect the triangle. However when when culling is off, we want to intersect triangles regardless of the normal orientation with respect to the ray direction.

The point we want to make here is that when culling is off and the determinant negative, it becomes important to "normalize \(u\)" by multiplying it by the inverse of the determinant. Because we later test if u is greater than 0 and lower than 1, when \(u\) is negative but the determinant also negative, then the sign of \(u\) when "normalized" (multiplied by invDet) is inverted (it becomes positive).

## Source Code

The C++ implementation of the MT algorithm is straightforward (if you have a good vector library) and is also very compact as you can see with this code snippet:

Compile with:

## Notes

These are important notes we don't want to address in this lesson which is supposed to be an introduction to the topic. But we will develop them as soon as we can. In the meantime we will briefly mention them.

One way of accelerating the ray-triangle is to store the constants A, B, C and D of the plane equation with the triangle's vertices (we precompute them once the mesh is loaded and store them in memory). However, storing variables in memory and accessing them can be more expansive than the time it requires to compute them on the fly. Therefore this is not necessarily proven to be a reliable optimisation.

One way of accelerating the algorithm is to reduce the ray-triangle intersection to two-dimensions. To do so, we determine the dominant axis of the triangle's normal and use this information to select the two coordinates we use for the projection. This technique is described in "Ray-Polygon Intersection. An Efficient Ray-Polygon Intersection" (see references section below).

Algorithms to ray-trace quads already exist.

Our code uses single precision floating numbers which is generally enough but the ray-triangle intersection test may in some conditions suffer from precision errors. For example the intersection point might not exactly lie on the triangle plane and be either slightly above or below the surface of the triangle. We will learn more about this in the lesson on shading.

## Exercises

- Add the camera transformation back to the source code of the main program.
- Compute more than one triangles with proper visibility using the trace() function we used in the previous lesson.
- Render a triangle form the back and test the culling branch of the code.

## References

Fast, Minimum Storage Ray/Triangle Intersection. Möller & Trumbore. Journal of Graphics Tools, 1997.

Ray-Polygon Intersection. An Efficient Ray-Polygon Intersection. Didier Badouel from Graphics Gems I. 1990