Invalid result for calculating angles between triangle respective planes - stl

I need to find the angle between two triangles' respective planes. I use triangles from an .stl file of different objects. I have followed the answer from this question. It works with some of the shapes, however, I recently encountered a problem, where the resulting cosine of the angle equals 2, thus it is not correct.
Neither of the two triangles in this case are degenerate, as their points respectively are A, B, C and B, C, D. The common edge is BC. The values:
A (50.3473, 2.03038, 50)
B (99.072, 10.6219, 50)
C (50.3473, 0.3038, 0)
D (99.072, 10.6219, 50)
When I calculate the cross products of BC X AB and BC X AD, they both have the same values. After normalizing them and finding the dot product, it results in 2.
Am I doing something wrong? What does this mean?
Any help is appreciated.

Cauchy-Schwarz inequality: the dot product of two normalized vectors cannot be greater than 1.
The problem must be in the normalisation of the vectors, or in the dot product calculation.

Related

What sort of loss function should I use this multi-class multi-label(?) problem?

In my experiment I am trying to train a neural network to detect if patients exhibit symptom A, B, C, D. My data consists of different angled photos of each patient along with whether or not they have symptom A, B, C, D.
Right now in, pytoch, I am using MSELoss and calculating my test error as the total number of correct classifications out of the total number of classifications. I'm guessing this is too naive and even inappropriate.
An example of a test error computation would be like this:
Suppose we have 2 patients with two images each of them. Then there would be 16 total classifications (1 for whether patient 1 has symptom A, B, C, D in photo 1, etc). And if the model correctly predicted that in photo 1 patient 1 exhibited symptom A then that would add 1 to the total number of correct classifications.
I suggest to use binary-crossentropy in multi-class multi-label classifications. This may seem counterintuitive for multi-label classification, but keep in mind that the goal here is to treat each output label as an independent distribution (or class).
In pytorch you can use torch.nn.BCELoss(weight=None, size_average=None, reduce=None, reduction='mean'). This creates a criterion that measures the Binary Cross Entropy between the target and the output.

Selecting polar coordinates from cartesian coordinates in a database

In my MySQL database I have three fields, x,y,z representing a position.
I would like to transform these coordinates into polar coordinates az,el,r, and based on these, select the rows where (e.g.) az are within some region.
How would I go about doing this in MySQL?
EDIT:
This in not a question of how to actually do the coordinate transformation, but rather, if MySQL is capable of transforming the data based on some method, and then selecting data once it is transformed with a criterion based on a comparison of the transformed data.
Solve the Triangle ...
Cartesian = How far along and how far up
Polar = How far away and what angle
In order to convert you need to solve the right triangle for the two known sides
you need to use Pythagoras theorem to find the long side (hypotenuse)
you need the Tangent Function to find the angle
r = √ ( x2 + y2 ) = Pythagoras
θ = tan-1 ( y / x ) = Tangent Function
assuming there's no negative values - then you would have to take the inverse of tan function, or convert them to their positive counterpart
Mysql Pythagorus
SQRT((POWER(242-'EAST',2)) + (POWER(463-'NORT',2))) < 50
assuming your coordinates look like this.... here is an example
http://www.tek-tips.com/viewthread.cfm?qid=1397712
Tangent Function here
http://dev.mysql.com/doc/refman/5.0/en/mathematical-functions.html#function_tan
IMHO this is really a spherical coordinate system maths problem, not a MySQL-specific question.
MySQL just happens to be the data container in this instance.
For any solution you need to work out the maths first, then it becomes a matter of applying the equations to the data.
I can help with MySQL, but I'd have to Google solving these equations and my fingers are tired =)

MySQL - Calculating a 3D Distance for stored data?

All-
I was just curious, I'm trying to basically calculate a distance to a multiple positions I have in a database, and was wondering if this is possible to do in a query?
I have maybe 7-9 million rows of positions (x, y, z, continent) and basically want to do a query like:
SELECT positions FROM my_table WHERE DISTANCE(x, y, z, new_x, new_y, new_z) < 500;
Does this even seem remotely possible? Or will I have to bring all the data down + do the calculations w/PHP? I've only seen it done w/GEO data vs. 3D coordinates.
Thanks in advance!
~ Josh
The distance between objects in x,y,z is the difference between each coordinate of the two objects.
Distance between (x₁, y₁, z₁) and (x₂, y₂, z₂)
(x₁-x₂, y₁-y₂, z₁-z₂)
The straight distance between the two points will be the root of the sum of the square of these values
√((x₁-x₂)²+(y₁-y₂)²+(z₁-z₂)²)
Given some (X,Y,Z) coordinate, table "stars" with coordinate columns x, y and z, this might work:
SELECT *
FROM stars
WHERE SQRT(POWER(x-X,2)+POWER(y-Y,2)+POWER(z-Z,2)) < 500

Multivariate Bisection Method

I need an algorithm to perform a 2D bisection method for solving a 2x2 non-linear problem. Example: two equations f(x,y)=0 and g(x,y)=0 which I want to solve simultaneously. I am very familiar with the 1D bisection ( as well as other numerical methods ). Assume I already know the solution lies between the bounds x1 < x < x2 and y1 < y < y2.
In a grid the starting bounds are:
^
| C D
y2 -+ o-------o
| | |
| | |
| | |
y1 -+ o-------o
| A B
o--+------+---->
x1 x2
and I know the values f(A), f(B), f(C) and f(D) as well as g(A), g(B), g(C) and g(D). To start the bisection I guess we need to divide the points out along the edges as well as the middle.
^
| C F D
y2 -+ o---o---o
| | |
|G o o M o H
| | |
y1 -+ o---o---o
| A E B
o--+------+---->
x1 x2
Now considering the possibilities of combinations such as checking if f(G)*f(M)<0 AND g(G)*g(M)<0 seems overwhelming. Maybe I am making this a little too complicated, but I think there should be a multidimensional version of the Bisection, just as Newton-Raphson can be easily be multidimed using gradient operators.
Any clues, comments, or links are welcomed.
Sorry, while bisection works in 1-d, it fails in higher dimensions. You simply cannot break a 2-d region into subregions using only information about the function at the corners of the region and a point in the interior. In the words of Mick Jagger, "You can't always get what you want".
I just stumbled upon the answer to this from geometrictools.com and C++ code.
edit: the code is now on github.
I would split the area along a single dimension only, alternating dimensions. The condition you have for existence of zero of a single function would be "you have two points of different sign on the boundary of the region", so I'd just check that fro the two functions. However, I don't think it would work well, since zeros of both functions in a particular region don't guarantee a common zero (this might even exist in a different region that doesn't meet the criterion).
For example, look at this image:
There is no way you can distinguish the squares ABED and EFIH given only f() and g()'s behaviour on their boundary. However, ABED doesn't contain a common zero and EFIH does.
This would be similar to region queries using eg. kD-trees, if you could positively identify that a region doesn't contain zero of eg. f. Still, this can be slow under some circumstances.
If you can assume (per your comment to woodchips) that f(x,y)=0 defines a continuous monotone function y=f2(x), i.e. for each x1<=x<=x2 there is a unique solution for y (you just can't express it analytically due to the messy form of f), and similarly y=g2(x) is a continuous monotone function, then there is a way to find the joint solution.
If you could calculate f2 and g2, then you could use a 1-d bisection method on [x1,x2] to solve f2(x)-g2(x)=0. And you can do that by using 1-d bisection on [y1,y2] again for solving f(x,y)=0 for y for any given fixed x that you need to consider (x1, x2, (x1+x2)/2, etc) - that's where the continuous monotonicity is helpful -and similarly for g. You have to make sure to update x1-x2 and y1-y2 after each step.
This approach might not be efficient, but should work. Of course, lots of two-variable functions don't intersect the z-plane as continuous monotone functions.
I'm not much experient on optimization, but I built a solution to this problem with a bisection algorithm like the question describes. I think is necessary to fix a bug in my solution because it compute tow times a root in some cases, but i think it's simple and will try it later.
EDIT: I seem the comment of jpalecek, and now I anderstand that some premises I assumed are wrong, but the methods still works on most cases. More especificaly, the zero is garanteed only if the two functions variate the signals at oposite direction, but is need to handle the cases of zero at the vertices. I think is possible to build a justificated and satisfatory heuristic to that, but it is a little complicated and now I consider more promising get the function given by f_abs = abs(f, g) and build a heuristic to find the local minimuns, looking to the gradient direction on the points of the middle of edges.
Introduction
Consider the configuration in the question:
^
| C D
y2 -+ o-------o
| | |
| | |
| | |
y1 -+ o-------o
| A B
o--+------+---->
x1 x2
There are many ways to do that, but I chose to use only the corner points (A, B, C, D) and not middle or center points liky the question sugests. Assume I have tow function f(x,y) and g(x,y) as you describe. In truth it's generaly a function (x,y) -> (f(x,y), g(x,y)).
The steps are the following, and there is a resume (with a Python code) at the end.
Step by step explanation
Calculate the product each scalar function (f and g) by them self at adjacent points. Compute the minimum product for each one for each direction of variation (axis, x and y).
Fx = min(f(C)*f(B), f(D)*f(A))
Fy = min(f(A)*f(B), f(D)*f(C))
Gx = min(g(C)*g(B), g(D)*g(A))
Gy = min(g(A)*g(B), g(D)*g(C))
It looks to the product through tow oposite sides of the rectangle and computes the minimum of them, whats represents the existence of a changing of signal if its negative. It's a bit of redundance but work's well. Alternativaly you can try other configuration like use the points (E, F, G and H show in the question), but I think make sense to use the corner points because it consider better the whole area of the rectangle, but it is only a impression.
Compute the minimum of the tow axis for each function.
F = min(Fx, Fy)
G = min(Gx, Gy)
It of this values represents the existence of a zero for each function, f and g, within the rectangle.
Compute the maximum of them:
max(F, G)
If max(F, G) < 0, then there is a root inside the rectangle. Additionaly, if f(C) = 0 and g(C) = 0, there is a root too and we do the same, but if the root is in other corner we ignore him, because other rectangle will compute it (I want to avoid double computation of roots). The statement bellow resumes:
guaranteed_contain_zeros = max(F, G) < 0 or (f(C) == 0 and g(C) == 0)
In this case we have to proceed breaking the region recursively ultil the rectangles are as small as we want.
Else, may still exist a root inside the rectangle. Because of that, we have to use some criterion to break this regions ultil the we have a minimum granularity. The criterion I used is to assert the largest dimension of the current rectangle is smaller than the smallest dimension of the original rectangle (delta in the code sample bellow).
Resume
This Python code resume:
def balance_points(x_min, x_max, y_min, y_max, delta, eps=2e-32):
width = x_max - x_min
height = y_max - y_min
x_middle = (x_min + x_max)/2
y_middle = (y_min + y_max)/2
Fx = min(f(C)*f(B), f(D)*f(A))
Fy = min(f(A)*f(B), f(D)*f(C))
Gx = min(g(C)*g(B), g(D)*g(A))
Gy = min(g(A)*g(B), g(D)*g(C))
F = min(Fx, Fy)
G = min(Gx, Gy)
largest_dim = max(width, height)
guaranteed_contain_zeros = max(F, G) < 0 or (f(C) == 0 and g(C) == 0)
if guaranteed_contain_zeros and largest_dim <= eps:
return [(x_middle, y_middle)]
elif guaranteed_contain_zeros or largest_dim > delta:
if width >= height:
return balance_points(x_min, x_middle, y_min, y_max, delta) + balance_points(x_middle, x_max, y_min, y_max, delta)
else:
return balance_points(x_min, x_max, y_min, y_middle, delta) + balance_points(x_min, x_max, y_middle, y_max, delta)
else:
return []
Results
I have used a similar code similar in a personal project (GitHub here) and it draw the rectangles of the algorithm and the root (the system have a balance point at the origin):
Rectangles
It works well.
Improvements
In some cases the algorithm compute tow times the same zero. I thinh it can have tow reasons:
I the case the functions gives exatly zero at neighbour rectangles (because of an numerical truncation). In this case the remedy is to incrise eps (increase the rectangles). I chose eps=2e-32, because 32 bits is a half of the precision (on 64 bits archtecture), then is problable that the function don't gives a zero... but it was more like a guess, I don't now if is the better. But, if we decrease much the eps, it extrapolates the recursion limit of Python interpreter.
The case in witch the f(A), f(B), etc, are near to zero and the product is truncated to zero. I think it can be reduced if we use the product of the signals of f and g in place of the product of the functions.
I think is possible improve the criterion to discard a rectangle. It can be made considering how much the functions are variating in the region of the rectangle and how distante the function is of zero. Perhaps a simple relation between the average and variance of the function values on the corners. In another way (and more complicated) we can use a stack to store the values on each recursion instance and garantee that this values are convergent to stop recursion.
This is a similar problem to finding critical points in vector fields (see http://alglobus.net/NASAwork/topology/Papers/alsVugraphs93.ps).
If you have the values of f(x,y) and g(x,y) at the vertexes of your quadrilateral and you are in a discrete problem (such that you don't have an analytical expression for f(x,y) and g(x,y) nor the values at other locations inside the quadrilateral), then you can use bilinear interpolation to get two equations (for f and g). For the 2D case the analytical solution will be a quadratic equation which, according to the solution (1 root, 2 real roots, 2 imaginary roots) you may have 1 solution, 2 solutions, no solutions, solutions inside or outside your quadrilateral.
If instead you have analytic functions of f(x,y) and g(x,y) and want to use them, this is not useful. Instead you could divide your quadrilateral recursively, however as it was already pointed out by jpalecek (2nd post), you would need a way to stop your divisions by figuring out a test that would assure you would have no zeros inside a quadrilateral.
Let f_1(x,y), f_2(x,y) be two functions which are continuous and monotonic with respect to x and y. The problem is to solve the system f_1(x,y) = 0, f_2(x,y) = 0.
The alternating-direction algorithm is illustrated below. Here, the lines depict sets {f_1 = 0} and {f_2 = 0}. It is easy to see that the direction of movement of the algorithm (right-down or left-up) depends on the order of solving the equations f_i(x,y) = 0 (e.g., solve f_1(x,y) = 0 w.r.t. x then solve f_2(x,y) = 0 w.r.t. y OR first solve f_1(x,y) = 0 w.r.t. y and then solve f_2(x,y) = 0 w.r.t. x).
Given the initial guess, we don't know where the root is. So, in order to find all roots of the system, we have to move in both directions.

Normal vector from least squares-derived plane

I have a set of points and I can derive a least squares solution in the form:
z = Ax + By + C
The coefficients I compute are correct, but how would I get the vector normal to the plane in an equation of this form? Simply using A, B and C coefficients from this equation don't seem correct as a normal vector using my test dataset.
Following on from dmckee's answer:
a x b = (a2b3 − a3b2), (a3b1 − a1b3), (a1b2 − a2b1)
In your case a1=1, a2=0 a3=A b1=0 b2=1 b3=B
so = (-A), (-B), (1)
Form the two vectors
v1 = <1 0 A>
v2 = <0 1 B>
both of which lie in the plane and take the cross-product:
N = v1 x v2 = <-A, -B, +1> (or v2 x v1 = <A, B, -1> )
It works because the cross-product of two vectors is always perpendicular to both of the inputs. So using two (non-colinear) vectors in the plane gives you a normal.
NB: You probably want a normalized normal, of course, but I'll leave that as an exercise.
A little extra color on the dmckee answer. I'd comment directly, but I do not have enough SO rep yet. ;-(
The plane z = Ax + By + C only contains the points (1, 0, A) and (0, 1, B) when C=0. So, we would be talking about the plane z = Ax + By. Which is fine, of course, since this second plane is parallel to the original one, the unique vertical translation that contains the origin. The orthogonal vector we wish to compute is invariant under translations like this, so no harm done.
Granted, dmckee's phrasing is that his specified "vectors" lie in the plane, not the points, so he's arguably covered. But it strikes me as helpful to explicitly acknowledge the implied translations.
Boy, it's been a while for me on this stuff, too.
Pedantically yours... ;-)