Is there any open software toolkit that compares the lexcial-level similarities among words and group similar words together? For example, Blue jean, Blue jeans, and blue jea (miss-spelled) should be grouped together? I don't need to look for semantic similarity here.
Try natural language toolkit http://nltk.org/
Here's a rather abstract treatment of the Brown Clustering algorithm http://www.cs.columbia.edu/~cs4705/lectures/brown.pdf
The standard similarity metric between words is the Levenstein distance http://en.wikipedia.org/wiki/Damerau%E2%80%93Levenshtein_distance
I belive you are more interested in stemming than in actual clustering e.g. using Levensthein distance: using an unsupervised textual similarity is way too likely to produce false positives.
From a lexical similarity point of view,
are just one character different, too. Yet, this is a rather unlikely typo.
You really want to use something supervised such as porter stemmers to match.