infer.sh 3.2 KB

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  1. #!/usr/bin/env bash
  2. set -e
  3. set -u
  4. set -o pipefail
  5. stage=1
  6. stop_stage=2
  7. model="damo/speech_paraformer-large_asr_nat-zh-cn-16k-common-vocab8404-pytorch"
  8. data_dir="./data/test"
  9. output_dir="./results"
  10. batch_size=64
  11. gpu_inference=true # whether to perform gpu decoding
  12. gpuid_list="0,1" # set gpus, e.g., gpuid_list="0,1"
  13. njob=64 # the number of jobs for CPU decoding, if gpu_inference=false, use CPU decoding, please set njob
  14. checkpoint_dir=
  15. checkpoint_name="valid.cer_ctc.ave.pb"
  16. . utils/parse_options.sh || exit 1;
  17. if ${gpu_inference} == "true"; then
  18. nj=$(echo $gpuid_list | awk -F "," '{print NF}')
  19. else
  20. nj=$njob
  21. batch_size=1
  22. gpuid_list=""
  23. for JOB in $(seq ${nj}); do
  24. gpuid_list=$gpuid_list"-1,"
  25. done
  26. fi
  27. mkdir -p $output_dir/split
  28. split_scps=""
  29. for JOB in $(seq ${nj}); do
  30. split_scps="$split_scps $output_dir/split/wav.$JOB.scp"
  31. done
  32. perl utils/split_scp.pl ${data_dir}/wav.scp ${split_scps}
  33. if [ -n "${checkpoint_dir}" ]; then
  34. python utils/prepare_checkpoint.py ${model} ${checkpoint_dir} ${checkpoint_name}
  35. model=${checkpoint_dir}/${model}
  36. fi
  37. if [ $stage -le 1 ] && [ $stop_stage -ge 1 ];then
  38. echo "Decoding ..."
  39. gpuid_list_array=(${gpuid_list//,/ })
  40. for JOB in $(seq ${nj}); do
  41. {
  42. id=$((JOB-1))
  43. gpuid=${gpuid_list_array[$id]}
  44. mkdir -p ${output_dir}/output.$JOB
  45. python infer.py \
  46. --model ${model} \
  47. --audio_in ${output_dir}/split/wav.$JOB.scp \
  48. --output_dir ${output_dir}/output.$JOB \
  49. --batch_size ${batch_size} \
  50. --gpuid ${gpuid}
  51. }&
  52. done
  53. wait
  54. mkdir -p ${output_dir}/1best_recog
  55. for f in token score text; do
  56. if [ -f "${output_dir}/output.1/1best_recog/${f}" ]; then
  57. for i in $(seq "${nj}"); do
  58. cat "${output_dir}/output.${i}/1best_recog/${f}"
  59. done | sort -k1 >"${output_dir}/1best_recog/${f}"
  60. fi
  61. done
  62. fi
  63. if [ $stage -le 2 ] && [ $stop_stage -ge 2 ];then
  64. echo "Computing WER ..."
  65. cp ${output_dir}/1best_recog/text ${output_dir}/1best_recog/text.proc
  66. cp ${data_dir}/text ${output_dir}/1best_recog/text.ref
  67. python utils/compute_wer.py ${output_dir}/1best_recog/text.ref ${output_dir}/1best_recog/text.proc ${output_dir}/1best_recog/text.cer
  68. tail -n 3 ${output_dir}/1best_recog/text.cer
  69. fi
  70. if [ $stage -le 3 ] && [ $stop_stage -ge 3 ];then
  71. echo "SpeechIO TIOBE textnorm"
  72. echo "$0 --> Normalizing REF text ..."
  73. ./utils/textnorm_zh.py \
  74. --has_key --to_upper \
  75. ${data_dir}/text \
  76. ${output_dir}/1best_recog/ref.txt
  77. echo "$0 --> Normalizing HYP text ..."
  78. ./utils/textnorm_zh.py \
  79. --has_key --to_upper \
  80. ${output_dir}/1best_recog/text.proc \
  81. ${output_dir}/1best_recog/rec.txt
  82. grep -v $'\t$' ${output_dir}/1best_recog/rec.txt > ${output_dir}/1best_recog/rec_non_empty.txt
  83. echo "$0 --> computing WER/CER and alignment ..."
  84. ./utils/error_rate_zh \
  85. --tokenizer char \
  86. --ref ${output_dir}/1best_recog/ref.txt \
  87. --hyp ${output_dir}/1best_recog/rec_non_empty.txt \
  88. ${output_dir}/1best_recog/DETAILS.txt | tee ${output_dir}/1best_recog/RESULTS.txt
  89. rm -rf ${output_dir}/1best_recog/rec.txt ${output_dir}/1best_recog/rec_non_empty.txt
  90. fi