You can use a language guesser that uses character n-gram statistics. Usually only a small amount of material is needed (both for training and classification). Links to literature and implementations can be found here:
The methodology is very simple:
- Collect a small amount of text for each language.
- Extract and count the 1-grams and 5-grams occurring in the text.
- Order these n-grams by frequency, taking the best, say 300. This forms the fingerprint of the language.
If you want to classify a text or a sentence, you apply steps 2 and 3, and compare the resulting fingerprint to the fingerprints collected during training. Calculate a score based on rank differences of n-grams, the language with the lowest score wins.