Query Intent classifier is used by a search engine to classify an online search query whether having a certain type of intent such as adult intent or commercial intent. Training such classifiers for each language is a supervised machine learning task that requires a large amount of labeled training queries. The manual annotation of training queries for each new emerging language using human judges is expensive, error-prone and time consuming. In this paper, we leverage the existing query classifiers in a source language and the abundant unlabeled queries in the query log of the underserved target language to reduce the cost and automate the training data annotation process. The most clicked search results of a query are used to predict the intent of this query instead of human judges. Document classifier is trained on hidden topics extracted by latent semantic indexing from the translation of source language documents into the target language. The experimental results, using English as the source language and Arabic as the target one, show that the proposed unsupervised method has trained support vector machines as Arabic query classifiers to detect both commercial and health intent without need for human-judged Arabic queries. The unsupervised classifiers outperform the classifiers based on direct query translation and the decision fusion of both classifier is superior.