I have tried using standard libraries for language detection on tweets. You will get a lot of false negatives because there are a lot of non-standard characters in names, smilies etc. This problem is more severe in smaller posts where the signal-to-noise ratio is lower.
The main problem is not the algorithm but the outdated data-sources. I would suggest crawling/streaming a new one from Twitter. The language flag in Twitter is based on geographical information, so that will not work in all cases. (A chinese person can still make chinese posts in USA). I would suggest using a white-list of a lot of English speaking persons and collect their posts.