# UBLAS Matrix Finding Surrounding Values of a Cell?

I am looking for an elegant way to implement this. Basically i have a m x n matrix. Where each cell represents the pixel value, and the rows and columns represent the pixel rows and pixel columns of the image.

Since i basically mapped points from a HDF file, along with their corresponding pixel values. We basically have alot of empty pixels. Which are filled with 0.

Now what i need to do is take the average of the surrounding cell's, to average out of a pixel value for the missing cell.

Now i can brute force this but it becomes ugly fast. Is there any sort of elegant solution for this?

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There's a well-known optimization to this filtering problem.

• Integrate the cells in one direction (say horizontally)
• Integrate the cells in the other direction (say vertically)
• Take the difference between each cell and it's N'th neighbor to the left.
• Take the difference between each cell and it's N'th lower neighbor

Like this:

```    for (i = 0; i < h; ++i)
for (j = 0; j < w-1; ++j)
A[i][j+1] += A[i][j];
for (i = 0; i < h-1; ++i)
for (j = 0; j < w; ++j)
A[i+1][j] += A[i][j]
for (i = 0; i < h; ++i)
for (j = 0; j < w-N; ++j)
A[i][j] -= A[i][j+N];
for (i = 0; i < h-N; ++i)
for (j = 0; j < w; ++j)
A[i][j] -= A[i-N][j];
```

What this does is:

• The first pass makes each cell the sum of all of the cells on that row to it's left, including itself.
• After the 2nd pass , each cell is the sum of all of the cells in a rectangle above and left of itselt (including it's own row and column)
• After the 3rd pass, each cell is the sum of a rectangle above and to the right of itself, N columns wide.
• After the 4th pass each cell is the sum of an NxN rectangle below and to the right of itself.

This takes 4 operations per cell to compute the sum, as opposed to 8 for brute force (assuming you're doing a 3x3 averaging filter).

The cool thing is that if you use ordinary two's-complement arithmetic, you don't have to worry about any overflows in the first two passes; they cancel out in the last two passes.

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