# What's the most storage efficient Octree structure for reconstruction?

I've coded a full octree implementation without too much optimization for 3D reconstruction, however, the tree structure contains too many pointers, and cannot support more than 256^3 voxels.

Theoretically, for a non-tree structure if I used a `vector<bool>` which uses ~1 bit per voxel, this would be more acceptable because the non-tree structure could support 2k^3 with 8GB memory.

However an optimized octree structure should be able do equal to or better than this, since:

1. It shouldn't have to store every voxel, since condensation can allow compression of nearby, same-value voxels.

2. It shouldn't use too many pointers, since pointers themselves uses a fair amount of bytes already.

3. The octree must have a fairly low node/voxel ratio.

For a full octree the node number could be calculated as `(s^3 -1) / 7`. The `s` is the volume resolution, which is a power of 2. For example if `s = 4`, I'd need `1 + 8 = 9` nodes in the octree to represent a 4x4x4 grid of voxels.

Does anyone know of an octree implementation in C++ that meets these specifications?

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This sort of stuff tends to be done using GPU's these days, you may be able to adapt the techniques used there for improving your code, a good starting place is Cyril Crassin's PhD work: maverick.inria.fr/Membres/Cyril.Crassin/thesis –  Necrolis Jan 23 '13 at 6:23
Why don't you just optimize youre current implementation? Leaf nodes for example, don't need a pointer to child nodes, which saves you some memory. Also you can use a sparse octree. I don't know how your octree implementation looks like, but if you want it to be memory efficient, why are you using vectors? 256^3 is a pretty low value. –  Dudeson Feb 7 '13 at 11:13
not sure that I understand the question but I think you can use array tree –  Mzf Jun 9 '13 at 18:46