# calculating the magnitude of a pixel in cuda with shared memory

I am working on a school project that we run the sift algorithm in cuda. I have at a point to calculate the magnitude value of every pixel(X) of an image based on the values of its neighbors(A,B,C,D):

``````   A
B  X  C
D
``````

I managed to make it by using global memory because I could easily get the values I wanted from my input array.

But now I want to make it by first putting the input array into shared memory but I am having a really tough time on how to make the threads put the right pixels on the shared memory. I must take into consideration the padding on the borders of the image.

I know that I need more shared memory than the part of image I want to put in there so that the padding will be included but I dont know if my thread block should contain more or less threads than the shared memory space and how to specify what to read. If someone can give me a general idea on how to think for this I could take it from there...

Thanks!

-
For image processing applications, shared memory usage is a bit complex. I would recommend that you use CUDA textures. Texture reads are cached, and handling of border cases is really easy. Textures are best suited for neighborhood operations. –  sgar91 Oct 9 '12 at 7:37
Which compute capability has your graphic device? –  pQB Oct 9 '12 at 8:50

I provided a code going through a gray scale image and appling sobel filter: (Sobel is a filter similar to your neighbor(A,B,C,D) function)

``````#define QUANTUM_TYPE short
__global__ void sobel_gpu(QUANTUM_TYPE *img_out, QUANTUM_TYPE *img_in, int WIDTH, int HEIGHT){
int x,y;
QUANTUM_TYPE LUp,LCnt,LDw,RUp,RCnt,RDw;
int pixel;

if(x<WIDTH && y<HEIGHT){
LUp = (x-1>=0 && y-1>=0)? img_in[(x-1)+(y-1)*WIDTH]:0;
LCnt= (x-1>=0)? img_in[(x-1)+y*WIDTH]:0;
LDw = (x-1>=0 && y+1<HEIGHT)? img_in[(x-1)+(y+1)*WIDTH]:0;
RUp = (x+1<WIDTH && y-1>=0)? img_in[(x+1)+(y-1)*WIDTH]:0;
RCnt= (x+1<WIDTH)? img_in[(x+1)+y*WIDTH]:0;
RDw = (x+1<WIDTH && y+1<HEIGHT)? img_in[(x+1)+(y+1)*WIDTH]:0;
pixel = -1*LUp  + 1*RUp +
-2*LCnt + 2*RCnt +
-1*LDw  + 1*RDw;
pixel=(pixel<0)?0:pixel;
pixel=(pixel>MAXRGB)?MAXRGB:pixel;
img_out[x+y*WIDTH]=pixel;
}
}
``````

The code is working for global memory and handles the boundary safely. My full code reads a BMP image and applies the filter on it and store the resulting BMP back to disk. It is available at here (CPU and GPU implementations are integrated, both for Linux and Windows).

You can turn it to shared memory style with a bit of work. First, you should decide about how much task you give to each block. Then break the task into multiple shared memory sink/drains. Matrix Multiply example in CUDA SDK gives you a perfect idea.

-