SparsePCA is an algorithm for finding a sparse decomposition (the components have a sparsity constraint) on dense data.
If you want to do vanilla PCA on sparse data you should use
sklearn.decomposition.RandomizedPCA that implements an scalable approximate method that works on both sparse and dense data.
sklearn.decomposition.PCA only works on dense data at the moment. Support for sparse data could be added in the future by delegating the SVD computation on the sparse data matrix to arpack for instance.
Edit: as noted in the comments sparse input for
RandomizedPCA is deprecated: instead you should use
sklearn.decomposition.TruncatedSVD that does precisely what
RandomizedPCA used to do on sparse data but should not have been called PCA in the first place.
To clarify: PCA is mathematically defined as centering the data (removing the mean value to each feature) and then applying truncated SVD on the centered data.
As centering the data would destroy the sparsity and force a dense representation that often does not fit in memory any more, it is common to directly do truncated SVD on sparse data (without centering). This resembles PCA but it's not exactly the same.