Skip to main content

Perform Smiling Face Animation Using Graphic Functions Program In C | VCMIT

Smiling Face Animation Program


INPUT

#include<graphics.h>
#include<conio.h>
#include<stdlib.h>

main()
{
int gd = DETECT, gm, area, temp1, temp2, left = 25, top = 75;
void *p;

initgraph(&gd,&gm,"C:\\TC\\BGI");

setcolor(YELLOW);
circle(50,100,25);
setfillstyle(SOLID_FILL,YELLOW);
floodfill(50,100,YELLOW);

setcolor(BLACK);
setfillstyle(SOLID_FILL,BLACK);
fillellipse(44,85,2,6);
fillellipse(56,85,2,6);

ellipse(50,100,205,335,20,9);
ellipse(50,100,205,335,20,10);
ellipse(50,100,205,335,20,11);

area = imagesize(left, top, left + 50, top + 50);
p = malloc(area);

setcolor(WHITE);
settextstyle(SANS_SERIF_FONT,HORIZ_DIR,2);
outtextxy(155,451,"Smiling Face Animation");

setcolor(BLUE);
rectangle(0,0,639,449);

while(!kbhit())
{
temp1 = 1 + random ( 588 );
temp2 = 1 + random ( 380 );

getimage(left, top, left + 50, top + 50, p);
putimage(left, top, p, XOR_PUT);
putimage(temp1 , temp2, p, XOR_PUT);
delay(100);
left = temp1;
top = temp2;
}
getch();
closegraph();
return 0;
}

OUTPUT


Comments

// Assuming you have fetched the search query and blog posts // Function to calculate the similarity score between search query and post function calculateSimilarity(query, post) { // You can use a similarity algorithm here, like TF-IDF or cosine similarity // Return a score that represents how relevant the post is to the query } // Function to suggest relevant posts based on search query function suggestPosts(searchQuery, blogPosts) { const suggestedPosts = []; for (const post of blogPosts) { const similarityScore = calculateSimilarity(searchQuery, post); if (similarityScore > 0) { suggestedPosts.push({ post, similarityScore }); } } // Sort the suggested posts based on similarity score suggestedPosts.sort((a, b) => b.similarityScore - a.similarityScore); // Return the sorted list of suggested posts return suggestedPosts.map(item => item.post); } // Example usage const searchQuery = "your search query"; const allBlogPosts = [/* array of your blog posts */]; const suggestedPosts = suggestPosts(searchQuery, allBlogPosts); // Now you can display suggestedPosts to the user