This paper presents our work on rapid language adaptation of acoustic models based on multilingual cross-language bootstrapping and unsupervised training. We used Automatic Speech Recognition (ASR) systems in English, French, German, and Spanish to build a Czech ASR system from scratch. System building was performed without using any transcribed audio data by applying three consecutive steps, i.e. cross-language transfer, unsupervised training based on the “multilingual A-stabil“ confidence score [1], and bootstrapping. Based on the confidence score we selected 72% (16.6 hours) of the available audio data with a transcription WER of less than 14.5%. The cross-language bootstrap achieves a word error rate of 23.3% on the Czech development set and 22.4% on the evaluation set. These results are very promising as the performance compares favorably to the Czech ASR system which was trained on 23 hours of