I'm sorry to disappoint, but, as far as I can tell, I am afraid the answer is no. I've worked extensively with sparse data and have not found any deep libraries (i.e. BLAS-level) for sparse matrix manipulations. At a higher level than BLAS, there is extensive support in Matlab, R, Python, and other languages.
From what I've seen, this arises because of the variations in the types of sparse matrices (scattered, symmetric, banded or tridiagonal, block diagonal), their contents (binary, integer, real), and their mathematical properties (e.g. positive definite - not guaranteed, full rank - not common), etc. tends to complicate the optimizations.
Instead, I tend to write my own code for processing sparse matrices, re-using what I can for the storage and simple computations like multiplication.
In time, a good low-level library will arise, but I've not yet seen it.