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Merging two upper hulls • Suppose, UH(S2) has s points given in an array according to their order on UH(S2). • We allocate s processors and divide the points on UH(S2) into s intervals and do a parallel search. log s ) O(1) time. • We can identify the point q r in O( i log s Lecture 7.2, page 1 Advanced Topics in Algorithms and Data Structures Merging two upper hulls • Suppose, the common tangent to UH(S1) and UH(S2) is the line uv . • u is on UH(S1) and v is on UH(S2) . • If we know the line ri qr , we can say in O(1) time whether u is above or below the line ri qr . i i Lecture 7.2, page 2 Advanced Topics in Algorithms and Data Structures Merging two upper hulls • Suppose, there are t points on UH(S1), given in an array according to their order on UH(S1). • We divide these t points in t intervals, each interval contains t points. • We now do a parallel search in the following ways. Lecture 7.2, page 3 Advanced Topics in Algorithms and Data Structures Merging two upper hulls • We allocate t s processors for the parallel search. • Suppose ri is the boundary vertex of one of the intervals. • For each such ri, we can find the tangent ri qr to UH(S2) in O(1) time using s processors. i Lecture 7.2, page 4 Advanced Topics in Algorithms and Data Structures Merging two upper hulls u is to the left of if and only if (along the polygonal chain of UH(S )) is above Lecture 7.2, page 5 Advanced Topics in Algorithms and Data Structures Merging two upper hulls • Hence, we can identify two boundary vertices rj and rk such that u is above rj and below rk. • Hence, u must be one of the t vertices in between rj and rk. • This computation takes O(1) time and s t O(n) processors. Lecture 7.2, page 6 Advanced Topics in Algorithms and Data Structures Merging two upper hulls • We can do a similar computation to find a group of s vertices on UH(S2) in which v is a member. • This computation again takes O(1) time and s t O(n) processors. Lecture 7.2, page 7 Advanced Topics in Algorithms and Data Structures Merging two upper hulls • Now, we have s vertices on UH(S2) and t vertices on UH(S1) . • There are s t O(n) possible lines if we join one point from UH(S1) and one point from UH(S2) . • For each of these O(n) lines, we can check in O(1) time whether the line is a common tangent to UH(S1) and UH(S2) . Lecture 7.2, page 8 Advanced Topics in Algorithms and Data Structures Merging two upper hulls • Suppose, uv is one such line. • ul and ur are the two neighboring vertices of u. Also, vl and vr are the two neighboring vertices of v. • uv is the common tangent to both UH(S1) and UH(S2) if all the point ul, ur, vl, vr are below uv . Lecture 7.2, page 9 Advanced Topics in Algorithms and Data Structures Merging two upper hulls • For each of the O(n) lines, we can check this condition in O(1) time. • Hence, we can find a common tangent to UH(S1) and UH(S2) in O(1) time and O(n) work. • We can form another array of vertices containing the vertices in UH(S1) UH(S2) by deleting some parts of the arrays of UH(S1) and UH(S2) and merging the remaining parts. Lecture 7.2, page 10 Advanced Topics in Algorithms and Data Structures The convex hull algorithm • We solve the problem through a divide and conquer strategy. • The depth of the recursion is O(log n) and we can do the merging of the convex hulls at every level of the recursion in O(1) time and O(n) work. • Hence, the overall time required is O(log n) and the overall work done is O(n log n) which is optimal. • We need the CREW PRAM model due to the concurrent reading in the parallel search algorithm. Lecture 7.2, page 11 Advanced Topics in Algorithms and Data Structures Intersection of half planes • Consider a line L defined by the equation y = ax + b. • L divides the entire plane into two half planes, H+(L) and H-(L). • H+(L) consists of all the points (, ) such that a + b. • Similarly, H-(L) consists of all the points a + b. • Intuitively, H+(L) is the set of points on or above the line L, • And, H-(L) is the set of points on or below the line L. Lecture 7.2, page 12 Advanced Topics in Algorithms and Data Structures Intersection of half planes • For a set of lines, the intersection of the positive half planes defined by these lines is a convex region. • However, the intersection may or may not be bounded. • Our aim is to compute the boundary of the intersection. Lecture 7.2, page 13 Advanced Topics in Algorithms and Data Structures Dual transform • Let T be a transformation that maps a point p = (a, b) into the line T(p) defined by y = ax + b. • The reverse transformation maps the line L : y = ax + b into the point T(L) = (-a, b). Lecture 7.2, page 14 Advanced Topics in Algorithms and Data Structures A property Property: A point p is below a line L if and only if T(p) is below the point T(L). – Consider a set of lines L1, L2,…,Ln, and the region C defined by 1 i n H+(Li) – The region C consists of all the points above all the lines Li,1 i n Lecture 7.2, page 15 Advanced Topics in Algorithms and Data Structures Intersection of half planes • In the transformed domain, T(C+) = { T(p) | pC+ } consists of all the lines above all the points T(Li), for 1 i n. Lecture 7.2, page 16 Advanced Topics in Algorithms and Data Structures Intersection of half planes • The extreme points of the intersection of half planes are now the line segments between two consecutive vertices of the convex hull in the dual space. Lecture 7.2, page 17 Advanced Topics in Algorithms and Data Structures Intersection of half planes • To compute the intersection of the half planes, we first convert the lines into their dual points. • Then we compute the convex hull of these dual points. • Finally, we get the extreme points of the intersection of half planes by converting the line segments between two consecutive extreme points of the convex hull into points. Lecture 7.2, page 18 Advanced Topics in Algorithms and Data Structures Intersection of half planes • The transformations take O(1) time each if we allocate one processor for each line. • The convex hull construction takes O(log n) time and O(n log n) work on the CREW PRAM. Lecture 7.2, page 19 Advanced Topics in Algorithms and Data Structures Two variable linear program • The two-variable linear program problem is defined as: Minimize cx + dy (Objective function) Subject to: aix + biy + ci 0, 1 i n. (Constraints) Lecture 7.2, page 20 Advanced Topics in Algorithms and Data Structures Two variable linear programming • Each constraint is a half plane. The feasible region is a set of points satisfying all the constraints. • The solution of the linear program is a point in the feasible region that minimizes the objective function. • The objective function is minimized at one of the extreme points of the feasible region. Lecture 7.2, page 21 Advanced Topics in Algorithms and Data Structures Two variable linear programming • Hence, we can find all the O(n) extreme points of the feasible region by the half plane intersection algorithm. • Then we can find the extreme point which minimizes the objective function. • The algorithm takes O(log n) time and O(n log n) work on the CREW PRAM. Lecture 7.2, page 22 Advanced Topics in Algorithms and Data Structures