# Simple Clusterization routine with CUDA

I'm trying to write a software, based on OpenCV and CUDA, for finding e grouping (clustering) all the ellipses found in an Image. The idea is to find ellipses with the findContour function and then group them based on the coordinates of the center of every ellipse.

The function for grouping the ellipses is based on CUDA and takes as input:

• the vector of structure containing all the ellipses found

and as output

• a matrix (of the same dimension of the figure) in which every position describes a pixel and contains a value describing the number of the ellipses centered in that pixel.

The following code give me wrong results and I can't understand where I wrong.

I would be grateful to everyone that can help me.

The structure describing the ellipses is the following:

struct _ellipse
{
int index;
double distance;
float angle;
float cx;
float cy;
float height;
float width;

_ellipse (int _index, double _distance, float _angle, float _cx, float _cy, float _height, float _width)
{
this->index = _index;
this->distance = _distance;
this->angle = _angle;
this->cx = _cx;
this->cy = _cy;
this->height = _height;
this->width = _width;
}

bool operator < (const _ellipse& ellipse) const
{
return (cx < ellipse.cx);
}

};

The CUDA function that should group the ellipses is:

__global__ void findClusters(_ellipse* _DfoundEllipses, int size, int* _Dclusters)
{
unsigned int bx = blockIdx.x;
unsigned int bdx = blockDim.x;
unsigned int counter = 0;

bool flag = false;

// malloc and printf function cannot be used inside a device function (only with Fermi GPU)

// I check all the ellipses for every pixel
for(int i = 0; i<size; i++)
{
if(_DfoundEllipses[i].cx == bx && _DfoundEllipses[i].cy == tx)
{
_Dclusters[bx*bdx+tx] += 1;
flag = true;
}
}
if(!flag)
_Dclusters[bx*bdx+tx] = 0;

}

For sending the data to the CUDA function, I use the cudaMallocPitch and CudaMemCpy2d functions:

#define WIDTH 320
#define HEIGHT 240

int main()
{

ellipseVector _foundEllipses;
_ellipse* _DfoundEllipses;
ellipseVector* _ResfoundEllipses;

int _clusters[WIDTH][HEIGHT];
int* _Dclusters;

///////////////////////////////////////////////////////////////////
// just for debugging I fill manually the vector of the ellipses //
///////////////////////////////////////////////////////////////////
_foundEllipses.push_back(_ellipse(0,1,1,2,0,1,1));
_foundEllipses.push_back(_ellipse(0,1,1,2,0,1,1));
_foundEllipses.push_back(_ellipse(0,1,1,12,0,1,1));
_foundEllipses.push_back(_ellipse(0,1,1,12,0,1,1));
_foundEllipses.push_back(_ellipse(4,1,1,149,0,1,1));
_foundEllipses.push_back(_ellipse(10,1,1,20,0,1,1));
_foundEllipses.push_back(_ellipse(10,1,1,150,0,1,1));
_foundEllipses.push_back(_ellipse(10,1,1,150,0,1,1));
_foundEllipses.push_back(_ellipse(10,1,1,150,0,1,1));

// Ordering the ellipses found
sort(_foundEllipses.begin(),_foundEllipses.end());

for (int i = 0; i< _foundEllipses.size(); i++)
{
cout << _foundEllipses.at(i).cx << " " << _foundEllipses.at(i).cy << endl;
}

int size = _foundEllipses.size() * sizeof(_ellipse);

cudaStatus = cudaMalloc((void**)&_DfoundEllipses,size);
if(cudaStatus != cudaSuccess)
{
fprintf(stderr,"cudaMalloc Failed! _DfoundEllipses");
return -1;
}

cudaStatus = cudaMemcpy(_DfoundEllipses,&_foundEllipses[0],size,cudaMemcpyHostToDevice);
cudaCheckErrors("Failed to allocate device buffer",-2);

size_t pitch;

cudaStatus = cudaMallocPitch((void**)&_Dclusters, &pitch, sizeof(int)*WIDTH,HEIGHT);
if(cudaStatus != cudaSuccess)
{
fprintf(stderr,"cudaMallocPitch Failed!");
return -2;
}

cudaStatus = cudaMemcpy2D(_Dclusters,pitch,_clusters,sizeof(int)*WIDTH,sizeof(int)*WIDTH,HEIGHT,cudaMemcpyHostToDevice);
if(cudaStatus != cudaSuccess)
{
fprintf(stderr,"cudaMemcpy2D _Dcluster Failed!");
return -4;
}

dim3 dimGrid(HEIGHT,1);
dim3 dimBlock(WIDTH,1,1);

findClusters<<<dimGrid,dimBlock>>>(_DfoundEllipses, _foundEllipses.size(), _Dclusters);

if (cudaStatus != cudaSuccess) {
fprintf(stderr, "cudaDeviceSynchronize returned error code %d after launching findClusters!\n", cudaStatus);
return -5;
}

cudaStatus = cudaMemcpy2D(_clusters,pitch,_Dclusters,sizeof(int)*WIDTH,sizeof(int)*WIDTH,HEIGHT,cudaMemcpyDeviceToHost);
if (cudaStatus != cudaSuccess) {
fprintf(stderr, "cudaMemcpy2D returned error code %d after doing cudaMemcpyDeviceToHost!\n", cudaStatus);
return -5;
}

ofstream myfile;
myfile.open ("log.txt");

for(int i=0; i<HEIGHT; i++)
{
for(int j=0; j<WIDTH; j++)
{
myfile << _clusters[i][j] << " ";
}
myfile << endl;
}

cudaFree(&_foundEllipses[0]);
cudaFree(_DfoundEllipses);
cudaFree(_ResfoundEllipses);

myfile.close();

return 0;
}

# UPDATE

Hi Guys, debugging the code with the NSight, I saw that the _Dclusters matrix is filled correctly. It seems that the problem is when I try to print the host matrix (_clusters) on a file

for(int i=0; i<HEIGHT; i++)
{
for(int j=0; j<WIDTH; j++)
{
myfile << _clusters[i][j] << " ";
}
myfile << endl;
}

Maybe the problem could be that the _Dcluster is managed as a vector while _clusters is a matrix effectively?

Do you have some suggestions?

-
without really answering the question : have you looked into Hough transforms for ellipses ? that might be relatively easy to parallelize. –  WhitAngl Apr 6 '13 at 23:34