This is a kaldi setup for 3rd CHiME challenge. See http://spandh.dcs.shef.ac.uk/chime_challenge/ for more detailed information. If you use these data in a publication, please cite: Jon Barker, Ricard Marxer, Emmanuel Vincent, and Shinji Watanabe, The third 'CHiME' Speech Separation and Recognition Challenge: Dataset, task and baselines, submitted to IEEE 2015 Automatic Speech Recognition and Understanding Workshop (ASRU), 2015. Quick instruction: 1) Download CHiME3 data Check the download page of http://spandh.dcs.shef.ac.uk/chime_challenge/ 2) move to Kaldi CHiME3 directory, e.g., cd kaldi-trunk/egs/chime3/s5 3) specify CHiME3 root directory in run.sh e.g., chime3_data=/CHiME3 4) execute run.sh ./run.sh 4*) we suggest to use the following command to save the main log file nohup ./run.sh > run.log 5) if you have your own enhanced speech data for training and test data, you can evaluate the performance of GMM and DNN systems by local/run_gmm.sh local/run_dnn.sh local/run_lmrescore.sh You can put in your working directory. But please make sure to use the same directory structure and naming convention with those of the example enhanced speech directory in CHiME3/data/audio/16kHz/enhanced You don't have to execute local/run_init.sh twice. 6) You can find result at enhan= GMM clean training: exp/tri3b_tr05_orig_clean/best_wer_$enhan.result GMM multi training: exp/tri3b_tr05_multi_$enhan/best_wer_$enhan.result DNN multi training: exp/tri4a_dnn_tr05_multi_${enhan}_smbr_i1lats/best_wer_${enhan}.result DNN multi training with LM rescoring: exp/tri4a_dnn_tr05_multi_${enhan}_smbr_i1lats_lmrescore/best_wer_${enhan}_rnnlm_5k_h300_w0.5_n100.result Note that training on clean data means original WSJ0 data only (no booth data)