I've tried on my own using a "between the equations of a line" approach, but I need to do the following:
I have a matrix, n by n, which store 2D histogram counts. I need to be able to specify points in order, and have the program count everything between these points.
For now at least, I would be most content with a simple rectangle (however, the rectangle can be rotated any number of degrees).
From my Paint.exe'd picture of the histogram, you can see I'd like to be able to count within the blue boxes. Counting the horizontal (top right) rectangle is not a problem (specify the boundaries in a For loop as start/end bins of the matrix).
I'm stuck on how to define the boundaries in code to count within the other (leftmost) blue box. I'm using Igor Pro (from WaveMetrics) to do this, so for the most part, this is non-specific to a language.
Basically this is for analyzing areas of interest in these graphs. There are tools to analyze images which come with "within a polygon/freeform" type things, but they cannot accurately get the counts from this matrix (they analyze based on image colors, not counts). Also, I cannot filter based on "is there more than X in this bin?" as the same rectangle must be applied to a baseline "noise" matrix.
Ideas? I'm really stuck on getting a core concept of how this would work..
EDIT: My attempt, which does not appear to work properly, specifically came up empty when I put in a "box", similar to the right blue box above. I can't necessarily varify the skewed rectangle either (as we have no real way of counting it anyways..)
// Find polygon boundaries
s1 = (y2-y1)/(x2-x1)
o1 = s1==inf || s1==-inf ? 0 : y2 - (s1*x2)
s2 = (y3-y2)/(x3-x2)
o2 = s2==inf || s2==-inf ? 0 : y3 - (s2*x3)
s3 = (y4-y3)/(x4-x3)
o3 = s3==inf || s3==-inf ? 0 : y4 - (s3*x4)
s4 = (y1-y4)/(x1-x4)
o4 = s4==inf || s4==-inf ? 0 : y1 - (s4*x1)
// Get highest/lowest points (used in For loop)
maxX = max(max(max(x1, x2), x3), x4)
maxY = max(max(max(y1, y2), y3), y4)
minX = min(min(min(x1, x2), x3), x4)
minY = min(min(min(y1, y2), y3), y4)
For (i=minX; i<=maxX; i+=1) // Iterate over each X bin
For (j=minY; j<=maxY; j+=1) // Iterate over each Y bin
// | BETWEEN LINE 1 AND LINE 3? | | BETWEEN LINE 2 AND LINE 4? |
If ( ( ((s1*i + o1) > j && j > (s3*i + o3)) || ((s1*i + o1) < j && j < (s3*i +o3)) ) && ( ((s2*i + o2) > j && j > (s4*i + o4)) || ((s2*i + o2) < j && j < (s4*i +o4)) ) )
totalCount += matrixRef[i][j] // Add the count of this bin to the total count
EndIf
EndFor // End Y iteration
EndFor // End X iteration
Igor has a tool that is way more powerful than your current solution
Go to the windows menu
Select Help Windows
Select "XOP Index.ihf"
Search for "Select Points for Mask"
It will explain how to define polygons of any shape in a graph and obtain a mask for the points inside. Then you can run whatever code you want on them.
You can also make/change the polygons in code.
You can count the values in the diagonal rectangle the same way as in the horizontal rectangle, you will just have a more complex loop to determine where the boundaries are. You can do this by looping over a horizontal rectangle that includes the entire diagonal rectangle and only counting the values if they fall inside of the diagonal one.
If you know the points that make up the corners of the diagonal rectangle then you can get the equations for each boundary (slope-intercept equation). From there you see what side of each boundary the points are on. If they are on the sides that correspond to the inside of the rectangle you include them, if they are not then you don't.
You are going to have to find the X and Y points of the borders for each point that you are working on. If you are only checking against the border on the bottom left you would have something like:
for(each point in the matrix){
if(point.x > border X value # height Y && point.y > border Y value # column X)
include this point
else
don't include it
}
If you have the equations for the boundaries and you know what point you are analyzing you can use the known X value (from the point) to get the Y value of the boundary (how high it is in that column that you are looking at) and the know Y value (again, from the point you are analyzing) to get the X value of the boundary (how far in the boundary is at the height of the point).
For the full list of conditions you should have the point be:
bottom-left border: point.x > border.x && point.y > border.y
bottom-right border: point.x < border.x && point.y > border.y
top-left border: point.x > border.x && point.y < border.y
top-right border: point.x < border.x && point.y < border.y
I'm looking for an algorithm to detect if two rectangles intersect (one at an arbitrary angle, the other with only vertical/horizontal lines).
Testing if a corner of one is in the other ALMOST works. It fails if the rectangles form a cross-like shape.
It seems like a good idea to avoid using slopes of the lines, which would require special cases for vertical lines.
The standard method would be to do the separating axis test (do a google search on that).
In short:
Two objects don't intersect if you can find a line that separates the two objects. e.g. the objects / all points of an object are on different sides of the line.
The fun thing is, that it's sufficient to just check all edges of the two rectangles. If the rectangles don't overlap one of the edges will be the separating axis.
In 2D you can do this without using slopes. An edge is simply defined as the difference between two vertices, e.g.
edge = v(n) - v(n-1)
You can get a perpendicular to this by rotating it by 90°. In 2D this is easy as:
rotated.x = -unrotated.y
rotated.y = unrotated.x
So no trigonometry or slopes involved. Normalizing the vector to unit-length is not required either.
If you want to test if a point is on one or another side of the line you can just use the dot-product. the sign will tell you which side you're on:
// rotated: your rotated edge
// v(n-1) any point from the edge.
// testpoint: the point you want to find out which side it's on.
side = sign (rotated.x * (testpoint.x - v(n-1).x) +
rotated.y * (testpoint.y - v(n-1).y);
Now test all points of rectangle A against the edges of rectangle B and vice versa. If you find a separating edge the objects don't intersect (providing all other points in B are on the other side of the edge being tested for - see drawing below). If you find no separating edge either the rectangles are intersecting or one rectangle is contained in the other.
The test works with any convex polygons btw..
Amendment: To identify a separating edge, it is not enough to test all points of one rectangle against each edge of the other. The candidate-edge E (below) would as such be identified as a separating edge, as all points in A are in the same half-plane of E. However, it isn't a separating edge because the vertices Vb1 and Vb2 of B are also in that half-plane. It would only have been a separating edge if that had not been the case
http://www.iassess.com/collision.png
Basically look at the following picture:
If the two boxes collide, the lines A and B will overlap.
Note that this will have to be done on both the X and the Y axis, and both need to overlap for the rectangles to collide.
There is a good article in gamasutra.com which answers the question (the picture is from the article).
I did similar algorithm 5 years ago and I have to find my code snippet to post it here later
Amendment: The Separating Axis Theorem states that two convex shapes do not overlap if a separating axis exists (i.e. one where the projections as shown do not overlap). So "A separating axis exists" => "No overlap". This is not a bi-implication so you cannot conclude the converse.
In Cocoa you could easily detect whether the selectedArea rect intersects your rotated NSView's frame rect.
You don't even need to calculate polygons, normals an such. Just add these methods to your NSView subclass.
For instance, the user selects an area on the NSView's superview, then you call the method DoesThisRectSelectMe passing the selectedArea rect. The API convertRect: will do that job. The same trick works when you click on the NSView to select it. In that case simply override the hitTest method as below. The API convertPoint: will do that job ;-)
- (BOOL)DoesThisRectSelectMe:(NSRect)selectedArea
{
NSRect localArea = [self convertRect:selectedArea fromView:self.superview];
return NSIntersectsRect(localArea, self.bounds);
}
- (NSView *)hitTest:(NSPoint)aPoint
{
NSPoint localPoint = [self convertPoint:aPoint fromView:self.superview];
return NSPointInRect(localPoint, self.bounds) ? self : nil;
}
m_pGladiator's answer is right and I prefer to it.
Separating axis test is simplest and standard method to detect rectangle overlap. A line for which the projection intervals do not overlap we call a separating axis. Nils Pipenbrinck's solution is too general. It use dot product to check whether one shape is totally on the one side of the edge of the other. This solution is actually could induce to n-edge convex polygons. However, it is not optmized for two rectangles.
the critical point of m_pGladiator's answer is that we should check two rectangles' projection on both axises (x and y). If two projections are overlapped, then we could say these two rectangles are overlapped. So the comments above to m_pGladiator's answer are wrong.
for the simple situation, if two rectangles are not rotated,
we present a rectangle with structure:
struct Rect {
x, // the center in x axis
y, // the center in y axis
width,
height
}
we name rectangle A, B with rectA, rectB.
if Math.abs(rectA.x - rectB.x) < (Math.abs(rectA.width + rectB.width) / 2)
&& (Math.abs(rectA.y - rectB.y) < (Math.abs(rectA.height + rectB.height) / 2))
then
// A and B collide
end if
if any one of the two rectangles are rotated,
It may needs some efforts to determine the projection of them on x and y axises. Define struct RotatedRect as following:
struct RotatedRect : Rect {
double angle; // the rotating angle oriented to its center
}
the difference is how the width' is now a little different:
widthA' for rectA: Math.sqrt(rectA.width*rectA.width + rectA.height*rectA.height) * Math.cos(rectA.angle)
widthB' for rectB: Math.sqrt(rectB.width*rectB.width + rectB.height*rectB.height) * Math.cos(rectB.angle)
if Math.abs(rectA.x - rectB.x) < (Math.abs(widthA' + widthB') / 2)
&& (Math.abs(rectA.y - rectB.y) < (Math.abs(heightA' + heightB') / 2))
then
// A and B collide
end if
Could refer to a GDC(Game Development Conference 2007) PPT www.realtimecollisiondetection.net/pubs/GDC07_Ericson_Physics_Tutorial_SAT.ppt
The accepted answer about the separating axis test was very illuminating but I still felt it was not trivial to apply. I will share the pseudo-code I thought, "optimizing" first with the bounding circle test (see this other answer), in case it might help other people. I considered two rectangles A and B of the same size (but it is straightforward to consider the general situation).
1 Bounding circle test:
function isRectangleACollidingWithRectangleB:
if d > 2 * R:
return False
...
Computationally is much faster than the separating axis test. You only need to consider the separating axis test in the situation that both circles collide.
2 Separating axis test
The main idea is:
Consider one rectangle. Cycle along its vertices V(i).
Calculate the vector Si+1: V(i+1) - V(i).
Calculate the vector Ni using Si+1: Ni = (-Si+1.y, Si+1.x). This vector is the blue from the image. The sign of the dot product between the vectors from V(i) to the other vertices and Ni will define the separating axis (magenta dashed line).
Calculate the vector Si-1: V(i-1) - V(i). The sign of the dot product between Si-1 and Ni will define the location of the first rectangle with respect to the separating axis. In the example of the picture, they go in different directions, so the sign will be negative.
Cycle for all vertices j of the second square and calculate the vector Sij = V(j) - V(i).
If for any vertex V(j), the sign of the dot product of the vector Sij with Ni is the same as with the dot product of the vector Si-1 with Ni, this means both vertices V(i) and V(j) are on the same side of the magenta dashed line and, thus, vertex V(i) does not have a separating axis. So we can just skip vertex V(i) and repeat for the next vertex V(i+1). But first we update Si-1 = - Si+1. When we reach the last vertex (i = 4), if we have not found a separating axis, we repeat for the other rectangle. And if we still do not find a separating axis, this implies there is no separating axis and both rectangles collide.
If for a given vertex V(i) and all vertices V(j), the sign of the dot product of the vector Sij with Ni is different than with the vector Si-1 with Ni (as occurs in the image), this means we have found the separating axis and the rectangles do not collide.
In pseudo-code:
function isRectangleACollidingWithRectangleB:
...
#Consider first rectangle A:
Si-1 = Vertex_A[4] - Vertex_A[1]
for i in Vertex_A:
Si+1 = Vertex_A[i+1] - Vertex_A[i]
Ni = [- Si+1.y, Si+1.x ]
sgn_i = sign( dot_product(Si-1, Ni) ) #sgn_i is the sign of rectangle A with respect the separating axis
for j in Vertex_B:
sij = Vertex_B[j] - Vertex_A[i]
sgn_j = sign( dot_product(sij, Ni) ) #sgnj is the sign of vertex j of square B with respect the separating axis
if sgn_i * sgn_j > 0: #i.e., we have the same sign
break #Vertex i does not define separating axis
else:
if j == 4: #we have reached the last vertex so vertex i defines the separating axis
return False
Si-1 = - Si+1
#Repeat for rectangle B
...
#If we do not find any separating axis
return True
You can find the code in Python here.
Note:
In this other answer they also suggest for optimization to try before the separating axis test whether the vertices of one rectangle are inside the other as a sufficient condition for colliding. However, in my trials I found this intermediate step to actually be less efficient.
Check to see if any of the lines from one rectangle intersect any of the lines from the other. Naive line segment intersection is easy to code up.
If you need more speed, there are advanced algorithms for line segment intersection (sweep-line). See http://en.wikipedia.org/wiki/Line_segment_intersection
One solution is to use something called a No Fit Polygon. This polygon is calculated from the two polygons (conceptually by sliding one around the other) and it defines the area for which the polygons overlap given their relative offset. Once you have this NFP then you simply have to do an inclusion test with a point given by the relative offset of the two polygons. This inclusion test is quick and easy but you do have to create the NFP first.
Have a search for No Fit Polygon on the web and see if you can find an algorithm for convex polygons (it gets MUCH more complex if you have concave polygons). If you can't find anything then email me at howard dot J dot may gmail dot com
Here is what I think will take care of all possible cases.
Do the following tests.
Check any of the vertices of rectangle 1 reside inside rectangle 2 and vice versa. Anytime you find a vertex that resides inside the other rectangle you can conclude that they intersect and stop the search. THis will take care of one rectangle residing completely inside the other.
If the above test is inconclusive find the intersecting points of each line of 1 rectangle with each line of the other rectangle. Once a point of intersection is found check if it resides between inside the imaginary rectangle created by the corresponding 4 points. When ever such a point is found conclude that they intersect and stop the search.
If the above 2 tests return false then these 2 rectangles do not overlap.
If you're using Java, all implementations of the Shape interface have an intersects method that take a rectangle.
Well, the brute force method is to walk the edges of the horizontal rectangle and check each point along the edge to see if it falls on or in the other rectangle.
The mathematical answer is to form equations describing each edge of both rectangles. Now you can simply find if any of the four lines from rectangle A intersect any of the lines of rectangle B, which should be a simple (fast) linear equation solver.
-Adam
You could find the intersection of each side of the angled rectangle with each side of the axis-aligned one. Do this by finding the equation of the infinite line on which each side lies (i.e. v1 + t(v2-v1) and v'1 + t'(v'2-v'1) basically), finding the point at which the lines meet by solving for t when those two equations are equal (if they're parallel, you can test for that) and then testing whether that point lies on the line segment between the two vertices, i.e. is it true that 0 <= t <= 1 and 0 <= t' <= 1.
However, this doesn't cover the case when one rectangle completely covers the other. That you can cover by testing whether all four points of either rectangle lie inside the other rectangle.
This is what I would do, for the 3D version of this problem:
Model the 2 rectangles as planes described by equation P1 and P2, then write P1=P2 and derive from that the line of intersection equation, which won't exist if the planes are parallel (no intersection), or are in the same plane, in which case you get 0=0. In that case you will need to employ a 2D rectangle intersection algorithm.
Then I would see if that line, which is in the plane of both rectangles, passes through both rectangles. If it does, then you have an intersection of 2 rectangles, otherwise you don't (or shouldn't, I might have missed a corner case in my head).
To find if a line passes through a rectangle in the same plane, I would find the 2 points of intersection of the line and the sides of the rectangle (modelling them using line equations), and then make sure the points of intersections are with in range.
That is the mathematical descriptions, unfortunately I have no code to do the above.
Another way to do the test which is slightly faster than using the separating axis test, is to use the winding numbers algorithm (on quadrants only - not angle-summation which is horrifically slow) on each vertex of either rectangle (arbitrarily chosen). If any of the vertices have a non-zero winding number, the two rectangles overlap.
This algorithm is somewhat more long-winded than the separating axis test, but is faster because it only require a half-plane test if edges are crossing two quadrants (as opposed to up to 32 tests using the separating axis method)
The algorithm has the further advantage that it can be used to test overlap of any polygon (convex or concave). As far as I know, the algorithm only works in 2D space.
Either I am missing something else why make this so complicated?
if (x1,y1) and (X1,Y1) are corners of the rectangles, then to find intersection do:
xIntersect = false;
yIntersect = false;
if (!(Math.min(x1, x2, x3, x4) > Math.max(X1, X2, X3, X4) || Math.max(x1, x2, x3, x4) < Math.min(X1, X2, X3, X4))) xIntersect = true;
if (!(Math.min(y1, y2, y3, y4) > Math.max(Y1, Y2, Y3, Y4) || Math.max(y1, y2, y3, y4) < Math.min(Y1, Y2, Y3, Y4))) yIntersect = true;
if (xIntersect && yIntersect) {alert("Intersect");}
I implemented it like this:
bool rectCollision(const CGRect &boundsA, const Matrix3x3 &mB, const CGRect &boundsB)
{
float Axmin = boundsA.origin.x;
float Axmax = Axmin + boundsA.size.width;
float Aymin = boundsA.origin.y;
float Aymax = Aymin + boundsA.size.height;
float Bxmin = boundsB.origin.x;
float Bxmax = Bxmin + boundsB.size.width;
float Bymin = boundsB.origin.y;
float Bymax = Bymin + boundsB.size.height;
// find location of B corners in A space
float B0x = mB(0,0) * Bxmin + mB(0,1) * Bymin + mB(0,2);
float B0y = mB(1,0) * Bxmin + mB(1,1) * Bymin + mB(1,2);
float B1x = mB(0,0) * Bxmax + mB(0,1) * Bymin + mB(0,2);
float B1y = mB(1,0) * Bxmax + mB(1,1) * Bymin + mB(1,2);
float B2x = mB(0,0) * Bxmin + mB(0,1) * Bymax + mB(0,2);
float B2y = mB(1,0) * Bxmin + mB(1,1) * Bymax + mB(1,2);
float B3x = mB(0,0) * Bxmax + mB(0,1) * Bymax + mB(0,2);
float B3y = mB(1,0) * Bxmax + mB(1,1) * Bymax + mB(1,2);
if(B0x<Axmin && B1x<Axmin && B2x<Axmin && B3x<Axmin)
return false;
if(B0x>Axmax && B1x>Axmax && B2x>Axmax && B3x>Axmax)
return false;
if(B0y<Aymin && B1y<Aymin && B2y<Aymin && B3y<Aymin)
return false;
if(B0y>Aymax && B1y>Aymax && B2y>Aymax && B3y>Aymax)
return false;
float det = mB(0,0)*mB(1,1) - mB(0,1)*mB(1,0);
float dx = mB(1,2)*mB(0,1) - mB(0,2)*mB(1,1);
float dy = mB(0,2)*mB(1,0) - mB(1,2)*mB(0,0);
// find location of A corners in B space
float A0x = (mB(1,1) * Axmin - mB(0,1) * Aymin + dx)/det;
float A0y = (-mB(1,0) * Axmin + mB(0,0) * Aymin + dy)/det;
float A1x = (mB(1,1) * Axmax - mB(0,1) * Aymin + dx)/det;
float A1y = (-mB(1,0) * Axmax + mB(0,0) * Aymin + dy)/det;
float A2x = (mB(1,1) * Axmin - mB(0,1) * Aymax + dx)/det;
float A2y = (-mB(1,0) * Axmin + mB(0,0) * Aymax + dy)/det;
float A3x = (mB(1,1) * Axmax - mB(0,1) * Aymax + dx)/det;
float A3y = (-mB(1,0) * Axmax + mB(0,0) * Aymax + dy)/det;
if(A0x<Bxmin && A1x<Bxmin && A2x<Bxmin && A3x<Bxmin)
return false;
if(A0x>Bxmax && A1x>Bxmax && A2x>Bxmax && A3x>Bxmax)
return false;
if(A0y<Bymin && A1y<Bymin && A2y<Bymin && A3y<Bymin)
return false;
if(A0y>Bymax && A1y>Bymax && A2y>Bymax && A3y>Bymax)
return false;
return true;
}
The matrix mB is any affine transform matrix that converts points in the B space to points in the A space. This includes simple rotation and translation, rotation plus scaling, and full affine warps, but not perspective warps.
It may not be as optimal as possible. Speed was not a huge concern. However it seems to work ok for me.
Here is a matlab implementation of the accepted answer:
function olap_flag = ol(A,B,sub)
%A and B should be 4 x 2 matrices containing the xy coordinates of the corners in clockwise order
if nargin == 2
olap_flag = ol(A,B,1) && ol(B,A,1);
return;
end
urdl = diff(A([1:4 1],:));
s = sum(urdl .* A, 2);
sdiff = B * urdl' - repmat(s,[1 4]);
olap_flag = ~any(max(sdiff)<0);
This is the conventional method, go line by line and check whether the lines are intersecting. This is the code in MATLAB.
C1 = [0, 0]; % Centre of rectangle 1 (x,y)
C2 = [1, 1]; % Centre of rectangle 2 (x,y)
W1 = 5; W2 = 3; % Widths of rectangles 1 and 2
H1 = 2; H2 = 3; % Heights of rectangles 1 and 2
% Define the corner points of the rectangles using the above
R1 = [C1(1) + [W1; W1; -W1; -W1]/2, C1(2) + [H1; -H1; -H1; H1]/2];
R2 = [C2(1) + [W2; W2; -W2; -W2]/2, C2(2) + [H2; -H2; -H2; H2]/2];
R1 = [R1 ; R1(1,:)] ;
R2 = [R2 ; R2(1,:)] ;
plot(R1(:,1),R1(:,2),'r')
hold on
plot(R2(:,1),R2(:,2),'b')
%% lines of Rectangles
L1 = [R1(1:end-1,:) R1(2:end,:)] ;
L2 = [R2(1:end-1,:) R2(2:end,:)] ;
%% GEt intersection points
P = zeros(2,[]) ;
count = 0 ;
for i = 1:4
line1 = reshape(L1(i,:),2,2) ;
for j = 1:4
line2 = reshape(L2(j,:),2,2) ;
point = InterX(line1,line2) ;
if ~isempty(point)
count = count+1 ;
P(:,count) = point ;
end
end
end
%%
if ~isempty(P)
fprintf('Given rectangles intersect at %d points:\n',size(P,2))
plot(P(1,:),P(2,:),'*k')
end
the function InterX can be downloaded from: https://in.mathworks.com/matlabcentral/fileexchange/22441-curve-intersections?focused=5165138&tab=function
I have a simplier method of my own, if we have 2 rectangles:
R1 = (min_x1, max_x1, min_y1, max_y1)
R2 = (min_x2, max_x2, min_y2, max_y2)
They overlap if and only if:
Overlap = (max_x1 > min_x2) and (max_x2 > min_x1) and (max_y1 > min_y2) and (max_y2 > min_y1)
You can do it for 3D boxes too, actually it works for any number of dimensions.
Enough has been said in other answers, so I'll just add pseudocode one-liner:
!(a.left > b.right || b.left > a.right || a.top > b.bottom || b.top > a.bottom);
Check if the center of mass of all the vertices of both rectangles lies within one of the rectangles.