Unsupervised POS tagging is a very interesting emerging research topic. If I understand correctly, you are actually asking how to evaluate your tagging accuracy, not how to debug the code. Evaluation is a known issue in unsupervised POS induction. The short answer to your question is: get this annotated corpus from NLTK, then map your states to the corpus tags by mapping a state to the tag it most often co-occurs with, and find the percentage of correct ones. This evaluation procedure is called Many-to-one mapping.
You should make yourself familiar with the literature, as it will answer your questions and more. Here are some places to start:
An early paper:
Mark Johnson. 2007. Why doesn’t EM find good HMM POS-taggers? In Proceedings of the 2007 Joint Conference on Empirical Methods in Natural Language Processing and Computational Natural Language Learning (EMNLP-CoNLL), pp. 296–305.
A survey paper:
Christos Christodoulopoulos, Sharon Goldwater and Mark Steedman. 2010. Two Decades of Unsupervised POS induction: How far have we come? In Proceedings of EMNLP 2010.
When you say "unsupervised", you should ask yourself whether you want to use only raw text, or also want to use a dictionary, for example. There are works on that, too.
Also, there is code available out there for the task.
Another place to ask about NLP is: http://metaoptimize.com/qa .
If you have other questions, don't hesitate to ask.