It seems that you have a lot of options here, depending on your exact needs, time, and skill level (in both Matlab and C++). The obvious ones are:
You can generate ASCII files in Matlab either using the
save(filename, variablename, '-ascii') syntax, or you can create a more custom format using c-style
fprintf commands. Then, within a C or C++ program the files are read using an
This is often easiest, and good enough in many cases. The fact that a human can read the files using notepad++, emacs, etc. is a nice sanity check, (although this is often overrated).
There are two big downsides. First, the files are very large (an 8 byte double number requires about 19 bytes to store in ASCII). Second, you have to be very careful to minimize the inevitable loss of precision.
For a simple array of numbers (for example, a 32-by-32 array of doubles) you can simply use the
fwrite Matlab function to write the array to a disk. Then within C/C++ use the parallel
This has no loss of precision, is pretty fast, and relatively small size on disk.
The downside with this approach is that complex Matlab structures cannot necessarily be saved.
Mathworks provided C library
Since this is a pretty common problem, the Mathworks has actually solved this by a direct C implementation of the functions needed to read/write to *.mat files. I have not used this particular library, by generally the libraries they provide are pretty easy to integrate. Some starting documentation is here: http://www.mathworks.com/help/matlab/apiref/_bqoqnz0.html#bqoqn5u
This should be a pretty robust solution, and relatively insensitive to changes, since it is part of the mainstream, supported Matlab toolset.
HDF5 based *.mat file
With recent versions of Matlab, you can use the notation
save(filename, variablename, '-v7.3'); to force Matlab to save the file in an HDF5 based format. Then you can use tools from the HDF5 group to handle the file. Note a decent, java-based GUI viewer (http://www.hdfgroup.org/hdf-java-html/hdfview/index.html#download_hdfview) and libraries for C, C++ and Fortran.
This is a non-fragile method to store binary data. It is also a bit of work to get the libraries working in your code.
One downside is that the Mathworks may change the details of how they map Matlab data types into the HDF5 file. If you really want to be robust, you may want to try ...
Custom HDF5 file
Instead of just taking whatever format the Mathworks decides to use, it's not that hard create a HDF5 file directly and push data into it from Matlab. This lets you control things like compression, chunk sizing, dataset hierarchy and names. It also insulates you from any future changes in the default *.mat file format. See the
h5write command in Matlab.
It is still a bit of effort to get running from the C/C++ end, so I would only go down this path if your project warranted it.