Let's classify the cell values into `target value`

and `replacement value(s)`

, where the cells with `target value`

are the ones you want to modify. You want to cluster the ones with `replacement value(s)`

. In your example, these values happen to be 1, and (2,3) respectively.

One usual application of flood-fill is to well, change cells with `replacement value(s)`

to ones with `target value`

, e.g. *bucket fill* tool in paint applications. If this is your use-case, you can simply change the cell values each time you visit the cell, thus removing the need to remember if you visited it previously. I am assuming that's not your use-case.

**Method #1:** Using dictionary

I would use a dictionary with (row, col) of the visited cell as key. Since you want to see if you have visited a (row, col), you can do it in O(1) time-complexity. Your method will need to first go to the particular `replacement value`

key, and then iterate through the list to find if the (current row, current col) is present in it. It's time-complexity is proportional to O(k), where k is the number of elements in the list. In the worst case, it will be O(RxC), where RxC is the dimension of the matrix.

**Method #2:** Using a bool matrix

Another approach which is simple is to have a matrix of type bool with same dimensions as the cell value matrix. Each time you visit a cell, mark it as True. You can check if a cell is already visited then in O(1).

In the worst case, both the above data structures will have a space-complexity of O(RxC). I am assuming this is fine, since you already have a matrix of the same order for cell values.

Whatare you trying to cluster and bywhichcriterion? – Fred Foo Jan 21 '13 at 16:17