Vector will probably consume more memory, because it usually allocates more space than required to store data and vector will call default constructor and destructor for Eigen::Vector3f every time you resize it. AFAIK, default Eigen::Vector3f constructor is empty, so it will cost you zero in release build (but you may experience performance problems in debug build, due to this and debug iterators). On the other side, Eigen::Matrix will reallocate memory each time you resize it (it will also copy the content just as std::vector if you use conservativeResize), this is slow.
Howewer, I still recommend you to use vector, because it is more convenient. You can dynamically add elements, resize it without reallocation, it is simpler to use standart algorithms on vector. If you want to be sure, that your vector don't consume more memory than required, you can use this trick to resize it:
vertices.swap( std::vector<Eigen::Vector3f>(size, Eigen::Vector3f()) );
Or see shrink_to_fit
And yes you can use memcpy to copy data efficently using both representation. But using std::copy will do the same job with same performance in release build (sometimes it is even replaced by compiler with memcpy).
Howewer, if you are still not satisfied with performance, here are tips I've made for myself to make a decision in such cases:
- If you are going to frequently resize vertices array (add or remove elements) -> go with std::vector to avoid frequent reallocations.
- If you store huge chunks of data in vertices array -> go with Eigen::Matrix to avoid excessive memory consumption.
- If you are not satisfied with performance in debug mode (this will luckily be true if you frequently process data in your vertices array) -> go with Eigen::Matrix, stl debug iterators can ruin the performance (only true for MSVC)
Also consider boost::shared_array(scoped_array), these are especially designed to store large chunks of data without consuming extra memory. Using them makes more sense in your scenario.