Yes, DBpedia may be a good choice for this kind of problem. You'll have to
- squash the DBpedia category structure so you get the right granularity (e.g., Pink Floyd is listed under
Capitol Records artists and a host of other categories, but not directly under
Music). Maybe pick a few large categories and try to find whether your concepts are listed indirectly in them;
- normalize text; Einstein is listed as
Albert Einstein, not
- deal with ambiguity due to terms describing multiple concepts and concepts belonging to multiple top-level categories.
These problems may be solvable using machine learning, but I only see how it can be done if you extract these terms, along with relevant features, from running text. But in that case, you might just as well classify the entire text into one of the categories you choose in step 1.