DBpedia is a fantastic, high quality resource. In order to turn your content into a set of relevant DBpedia concepts, however, you will need to accurately identify them in your text, which involves at least two steps:
Identify DBpedia concepts in your content: This includes recognizing concept names (and alternate names) in text, and also disambiguating among all possible meanings of each phrase. The term "Sun" may refer to dozens of possible concepts according to its disambiguation page including a star, newspapers, person names, etc. This involves entity identification, classification, and linking.
Identify which of those concepts are interesting: For example, do you want the concept "Definite article" showing up when text includes the term "the" (which The redirects to)?
You may want to consider a preexisting text analytics library or service, which supports entity linking to DBpedia. One great tool for topic indexing is Maui, which was developed by Alyona Medelyan during her PhD. You can find the code online, as well as a demo on Google App Engine. Another great open source solution is Wikipedia Miner by David Milne at the same university.
Two commercial services which provide linking to DBpedia concepts are Zemanta and Extractiv (allow some level of free use). DBpedia spotlight is an early non-commercial option. Others which may provide these capabilities are listed at: Is there a better tool than opencalais?
Disclosure: I work at Extractiv, which is powered by Language Computer Corporation's NLP.