# Closest distance between two points(disjoint set)

This problem is a kind of closest pair between two disjoint set. Upperside picture is expressed this problem. there is two kind of disjoint set, blue dots in -x plane, red dots in +x plane.

I want to calculate minimum distance(distance is |y2-y1| + |x2 - x1|) between one blue dot and one red dot, and I think use binary search for finding distance. How to use binary search this kind of problem? I struggle on only expressing binary search two disjoint sets. I have already know for one set, but I don't know in case two disjoint sets.

++ ) it is can in linear time using Delaunay triangulation? (ah, it is only my curiosity, I want to use binary search)

below code which I had already coding one set case(using problem-solving technique, divide and qonquer) and coverting to two disjoint set. I don't understand how to do in two sets. Example, Hint. okay.. please someone help me?

``````#include <iostream>
#include <algorithm>
#include <iomanip>
#include <cmath>

/**
test input
10
-16 -4
-1 -3
-9 -1
-4 -10
-11 -6
-20 4
-13 6
-3 -10
-19 -1
-12 -4
10
8 2
10 3
10 10
20 -3
20 3
16 2
3 -5
14 -10
8 -2
14 0

10
-3 39
-2 -28
-1 20
-3 11
-3 45
-2 -44
-1 -47
-5 -35
-5 -19
-5 -45
10
27 5
28 0
28 5
21 5
2 3
13 -1
16 -2
20 -2
33 -3
27 1
**/

using namespace std;

const int MAX = 10001;

struct point{
int x,y;
};

bool xCompare(struct point, struct point);
bool yCompare(struct point, struct point);
int dis(struct point, struct point);

int absd(int);
int trace(int,int,int,int);

point p[MAX], q[MAX], tmp[MAX];

int main(){

int left;
int right;

scanf("%d\n", &left);
memset(p,0,sizeof(p));
memset(q,0,sizeof(q));
memset(tmp,0,sizeof(tmp));

for(int i=0; i<left; i++){
cin >> p[i].x >> p[i].y;
}

scanf("%d\n", &right);

for(int j=0; j<right; j++){
cin >> q[j].x >> q[j].y;
}

sort(p, p+left, xCompare);
sort(q, q+right, xCompare);

int min = trace(0,0, left-1, right-1);

printf("%d\n", min);

/** this is one set case.
while(true){
cin >> n;

if(n == 0)  break;

memset(p,0,sizeof(p));
memset(tmp,0,sizeof(tmp));

for(int i= 0;i<n;i++)
cin >> p[i].x >> p[i].y;

sort(p,p+n,xCompare);

int min = trace(0,n-1);

if(min < 10000 && n > 1){
cout << fixed;
cout << setprecision(4) << min << endl;
}
else
cout << "INFINITY" << endl;
}
**/

return 0;
}

int trace(int low1, int low2, int high1, int high2){

if(high1 - low1 < 3){
int value = dis(p[low1],q[low2+1]);
int nextValue;

if(high1 - low1 == 2){
nextValue = dis(p[low1],q[low2+2]);

if(value > nextValue)
value = nextValue;

nextValue = dis(p[low1+1],q[low2+2]);

if(value > nextValue)
value = nextValue;
}
return value;
}
else{

/* DIVIDE & QONQUER */

int mid1 = (low1 + high1) >> 1;
int mid2 = (low2 + high2) >> 1;
int cnt = 0;

int leftValue = trace(low1,low2,mid1,mid2);     // left trace
int rightValue = trace(mid1+1,mid2+1,high1,high2);  // right trace

// min value find
int value = leftValue < rightValue ? leftValue : rightValue;

/* Middle Condition Check : Y Line */

// saving left
for(int i = low1;i<=mid1;i++){
if(abs(p[i].x - q[mid2].x) <= value)
tmp[cnt++] = p[i];
}

// saving right
for(int i = mid1+1;i<=high1;i++){
if(absd(p[i].x - q[mid2+1].x) <= value)
tmp[cnt++] = p[i];
}

sort(tmp,tmp+cnt,yCompare);

for(int i = 0;i<cnt;i++){
int count = 0;

for(int j = i-3;count < 6 && j < cnt;j++){
if(j >= 0 && i != j){
int distance = dis(tmp[i],tmp[j]);

if(value > distance)
value = distance;

count++;
}
}
}
return value;
}
}

int absd(int x){
if( x < 0)
return -x;
return x;
}

int dis(struct point a, struct point b){
return (abs(a.x-b.x) + abs(a.y-b.y));
}

bool xCompare(struct point a, struct point b){
return a.x < b.x;
}

bool yCompare(struct point a, struct point b){
return a.y < b.y;
}
``````
-
this is a nearest neighbor problem. en.wikipedia.org/wiki/K-nearest_neighbor_algorithm and it feels like a homework problem. is it homework? –  madmik3 Nov 20 '11 at 18:16
I solve acm problems ~ :) especially computational geometry, graphs. –  Silvester Nov 20 '11 at 18:21
The Delaunay triangulation contains a minimum spanning tree, which in turn contains the cheapest edge crossing the cut (blue dots, red dots). –  Per Nov 20 '11 at 18:31
@Per: that may be worth an answer? –  Matthieu M. Nov 20 '11 at 18:53
Taxicab geometry! –  Seth Johnson Nov 20 '11 at 19:02

This problem is usually called the closest bichromatic pair problem. Here are a couple approaches.

1. Delaunay triangulation. (This certainly works with L2 (= Euclidean) distances; I think the steps generalize to L1.) For every Delaunay triangulation (there can be more than one in degenerate cases), there exists a minimum spanning tree whose edges all belong to the triangulation. In turn, this minimum spanning tree contains a shortest edge crossing the cut between the color classes.

2. Nearest neighbor data structures.

3. If it is given that the red points are separated in x from the blue points, then you may be able to adapt the O(n) merge step of the Shamos–Hoey divide-and-conquer algorithm for the closest (monochromatic) pair problem, described here.

-

If you want to do binary search on spatial data, you could use a spatial data structure, such as a quadtree or a k-d tree.

-

I worked on a similar problem where I had to find a nearest member to identify if a member belong to a cluster within a cluster. I was trying to identify clusters within clusters. Here is the code, This might help you get start.

``````/**
* Find the nearest neighbor based on the distance threshold.
* TODO:
* @param currentPoint current point in the memory.
* @param threshold dynamic distance threshold.
* @return return the neighbor.
*/

private double nearestNeighbor(double currentPoint) {

HashMap<Double, Double> unsorted = new HashMap<Double, Double>();
TreeMap<Double, Double> sorted = null;
double foundNeighbor = 0.0;

for (int i = 0; i < bigCluster.length; i++) {
if (bigCluster[i] != 0.0 && bigCluster[i] != currentPoint) {
double shortestDistance = Math.abs(currentPoint - bigCluster[i]);
if (shortestDistance <= this.getDistanceThreshold())
unsorted.put(shortestDistance, bigCluster[i]);
}
}
if (!unsorted.isEmpty()) {
sorted = new TreeMap<Double, Double>(unsorted);
this.setDistanceThreshold(avgDistanceInCluster());
foundNeighbor = sorted.firstEntry().getValue();
return foundNeighbor;
} else {
return 0.0;
}
}

/**
* Method will check if a point belongs to a cluster based on the dynamic
* threshold.
*/
public void isBelongToCluster() {

for (int i=0; i < tempList.size(); i++) {

double aPointInCluster = tempList.get(i);

double newNeighbor = nearestNeighbor(aPointInCluster);
if ( newNeighbor != 0.0) {
if (i + 1 > tempList.size() && (visited[i] != true)) {
isBelongToCluster();
}
}

}

for (int i=0; i < cluster.size(); i++) {
if (cluster.get(i) != 0.0)
System.out.println("whats in the cluster -> " + cluster.get(i));
}
}
``````
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I didn't realized you were asking the answer to be in C, sorry about that. –  Null-Hypothesis Nov 20 '11 at 19:03