Image Compression(DFS)
Description
Strategies for compressing two-dimensional images are often based on finding regions with high similarity. In this problem, we explore a particular approach based on a hierarchical decomposition of the image. For simplicity, we consider only bitmapped images such as the one on the right:
The image is encoded as a tree, with the root representing the entire image region. If a region is monochromatic, then the node for that region is a leaf storing the color of the region. Otherwise, the region is divided into four parts about its center, and the approach is applied recursively to each quadrant. For a non-leaf node, its four children represent the four quadrants ordered as upper-right, upper-left, lower-left, lower-right respectively.
As an example, on the right is the tree encoding of the above image.
The original image is not monochromatic, so we considered the four quadrants. The top-right quadrant is monochromatic white, so the first child of the root node is a leaf with value 0. The top-left quadrant is not monochromatic, so it is further divided into four subquadrants, each of which is trivially monochromatic. This results in the subtree with leaf values 0, 0, 1, 0. The final two quadrants are monochromatic with respective values 0 and 1.
As a larger example, here is an 8 × 8 image and the tree encoding of it.
Thus far we have described a lossless compression scheme, but the approach can be used for lossy compression with the following adjustment. Instead of continuing the decomposition until reaching a monochromatic region, a threshold such as 75% is used, and a leaf is created whenever a region has at least that percentage of either color. As an example, here is the encoding of the above 8 × 8 image if using 75% as the threshold.
Notice that 75% of the top-left quadrant of the full image is black, and therefore the second child of the root is 1, and that more than 75% of the bottom-left quadrant of the full image is white, and therefore the third child of the root is 0. However, neither white nor black reaches 75% in the top-right quadrant, so the recursive decomposition continues, but all four of those subquadrants achieve the 75% threshold and become leaves. If we were to uncompress the image based on this new lossy encoding, we get back the following result.
Input
The input will consist of a series of data sets, followed by a line containing only ‘0’. Each data set begins with a line containing values W and T, where W is the width of the bitmap and T is the threshold percentage. Images will always be square with 1 ≤ W ≤ 64 being a power of two. Threshold T will be an integer with 51 ≤ T ≤ 100. Following the specification of W and T are W additional lines, each of which is a string of width W containing only characters ‘0’ and ‘1’, representing a row of the image bitmap, from top to bottom.
Output
For each data set, you should print an initial line of the form ‘Image #:’ numbering the images starting with 1. Following that should be W lines, with each line representing a row of the resulting bitmap as a string of characters ‘0’ and ‘1’, from top to bottom.
Sample Input
4 80
0000
1000
0011
0011
8 75
11111000
11110000
11000011
11000011
11000100
00000100
00010011
00010011
4 75
1101
1111
0111
0011
0
Sample Output
Image 1:
0000
1000
0011
0011
Image 2:
11110000
11110000
11110011
11110011
00000100
00000100
00000011
00000011
Image 3:
1111
1111
1111
1111
解析
题意大致是给定一个w*w的矩阵,每个点用0、1表示,判断若0(1)占有的百分比大于或等于题目给出的比率,就将当前矩阵所有点改成0(1),若小于就将当前矩阵四分,然后从子矩阵判断,执行相同操作,直到判断出符合条件为止。用DFS,只是入口有限制,即每次要判断不符合条件才能进行DFS(看了大佬的代码)
代码
#include<stdio.h>
#define MAX 80
char img[MAX][MAX],op[MAX][MAX];
int T;
int judge(int x1,int x2,int y1,int y2,int n)
{
int i,j,total=0;
for(i=x1-1;i<x2;i++)
{
for(j=y1-1;j<y2;j++)
{
if(img[i][j]=='0')
total+=1;
}
}
if(total*100>=n*T)
{
for(i=x1-1;i<x2;i++)
{
for(j=y1-1;j<y2;j++)
{
op[i][j]='0';
}
}
return 1;
}
else if((n-total)*100>=n*T)
{
for(i=x1-1;i<x2;i++)
{
for(j=y1-1;j<y2;j++)
{
op[i][j]='1';
}
}
return 1;
}
else
return 0;
}
void solve(int x1,int x2,int y1,int y2,int n)
{
if(!judge(x1,x2,y1,y2,n))
{
solve(x1,(x1+x2)/2,y1,(y1+y2)/2,n/4);
solve((x1+x2)/2+1,x2,y1,(y1+y2)/2,n/4);
solve(x1,(x1+x2)/2,(y1+y2)/2+1,y2,n/4);
solve((x1+x2)/2+1,x2,(y1+y2)/2+1,y2,n/4);
}
}
int main()
{
int n,i,kase=1;
while(~scanf("%d",&n))
{
if(n==0) break;
scanf("%d",&T);
for(i=0;i<n;i++)
{
scanf("%s",img[i]);
}
solve(1,n,1,n,n*n);
printf("Image %d:\n",kase++);
for(i=0;i<n;i++)
{
op[i][n]='\0';
printf("%s\n",op[i]);
}
}
return 0;
}
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