Parallelizing using openmp with 4 for loops

I am trying to parallelize my code using openmp. I have managed to parallelize most of my code except one part. From my knowledge the following part cannot be parallelized but I thought of having a different opinion. Any suggestions would be appreciated. If possible the inner 2 for loops can be parallelized it will be great.

for (o = 0; o < octaves; ++o)
for ( i = 0; i <= 1; ++i)
{
b = responseMap.at(filter_map[o][i]);
m = responseMap.at(filter_map[o][i+1]);
t = responseMap.at(filter_map[o][i+2]);

// loop over middle response layer at density of the most
// sparse layer (always top), to find maxima across scale and space

for ( r = 0; r < t->height; ++r)
{
for (c = 0; c < t->width; ++c)
{
if (isExtremum(r, c, t, m, b))
{
interpolateExtremum(r, c, t, m, b);
}
}
}
}

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What is the output of your algorithm? o, i, r and c are local to your loops, and b, m, t seem to also be temporary variables. There must surely be some side-effect somewhere, otherwise I fail to see how such an algorithm can yield anything useful... – Francesco Mar 21 '12 at 8:21
"From my knowledge the following part cannot be parallelized": why? And what does interpolateExtremum() do, does it affect the next loop iterations? – gfour Mar 21 '12 at 8:36

Well let's see here: r and c are local variables inside the loops. t, m and b seem to be read-only shared state for the inner loops. If the isExtremum and interpolateExtremum are pure functions (they don't produce side-effects), then you can safely slap a parallel for on the inner loops:

  #pragma omp parallel for private(r, c)
for ( r = 0; r < t->height; ++r)
{
for (c = 0; c < t->width; ++c)
{
if (isExtremum(r, c, t, m, b))
{
interpolateExtremum(r, c, t, m, b);
}
}
}

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