[[Back]](..) # S2T Example: Speech Translation (ST) on Multilingual TEDx [Multilingual TEDx](https://arxiv.org/abs/2102.01757) is multilingual corpus for speech recognition and speech translation. The data is derived from TEDx talks in 8 source languages with translations to a subset of 5 target languages. ## Data Preparation [Download](http://openslr.org/100/) and unpack Multilingual TEDx data to a path `${MTEDX_ROOT}/${LANG_PAIR}`, then preprocess it with ```bash # additional Python packages for S2T data processing/model training pip install pandas torchaudio soundfile sentencepiece # Generate TSV manifests, features, vocabulary # and configuration for each language python examples/speech_to_text/prep_mtedx_data.py \ --data-root ${MTEDX_ROOT} --task asr \ --vocab-type unigram --vocab-size 1000 python examples/speech_to_text/prep_mtedx_data.py \ --data-root ${MTEDX_ROOT} --task st \ --vocab-type unigram --vocab-size 1000 # Add vocabulary and configuration for joint data # (based on the manifests and features generated above) python examples/speech_to_text/prep_mtedx_data.py \ --data-root ${MTEDX_ROOT} --task asr --joint \ --vocab-type unigram --vocab-size 8000 python examples/speech_to_text/prep_mtedx_data.py \ --data-root ${MTEDX_ROOT} --task st --joint \ --vocab-type unigram --vocab-size 8000 ``` The generated files (manifest, features, vocabulary and data configuration) will be added to `${MTEDX_ROOT}/${LANG_PAIR}` (per-language data) and `MTEDX_ROOT` (joint data). ## ASR #### Training Spanish as example: ```bash fairseq-train ${MTEDX_ROOT}/es-es \ --config-yaml config_asr.yaml --train-subset train_asr --valid-subset valid_asr \ --save-dir ${ASR_SAVE_DIR} --num-workers 4 --max-tokens 40000 --max-epoch 200 \ --task speech_to_text --criterion label_smoothed_cross_entropy --report-accuracy \ --arch s2t_transformer_xs --optimizer adam --lr 2e-3 --lr-scheduler inverse_sqrt \ --warmup-updates 10000 --clip-norm 10.0 --seed 1 --dropout 0.3 --label-smoothing 0.1 \ --load-pretrained-encoder-from ${PRETRAINED_ENCODER} \ --skip-invalid-size-inputs-valid-test \ --keep-last-epochs 10 --update-freq 8 --patience 10 ``` For joint model (using ASR data from all 8 languages): ```bash fairseq-train ${MTEDX_ROOT} \ --config-yaml config_asr.yaml \ --train-subset train_es-es_asr,train_fr-fr_asr,train_pt-pt_asr,train_it-it_asr,train_ru-ru_asr,train_el-el_asr,train_ar-ar_asr,train_de-de_asr \ --valid-subset valid_es-es_asr,valid_fr-fr_asr,valid_pt-pt_asr,valid_it-it_asr,valid_ru-ru_asr,valid_el-el_asr,valid_ar-ar_asr,valid_de-de_asr \ --save-dir ${MULTILINGUAL_ASR_SAVE_DIR} --num-workers 4 --max-tokens 40000 --max-epoch 200 \ --task speech_to_text --criterion label_smoothed_cross_entropy --report-accuracy \ --arch s2t_transformer_s --optimizer adam --lr 2e-3 --lr-scheduler inverse_sqrt \ --warmup-updates 10000 --clip-norm 10.0 --seed 1 --dropout 0.3 --label-smoothing 0.1 \ --skip-invalid-size-inputs-valid-test \ --keep-last-epochs 10 --update-freq 8 --patience 10 \ --ignore-prefix-size 1 ``` where `MULTILINGUAL_ASR_SAVE_DIR` is the checkpoint root path. We set `--update-freq 8` to simulate 8 GPUs with 1 GPU. You may want to update it accordingly when using more than 1 GPU. For multilingual models, we prepend target language ID token as target BOS, which should be excluded from the training loss via `--ignore-prefix-size 1`. #### Inference & Evaluation ```bash CHECKPOINT_FILENAME=avg_last_10_checkpoint.pt python scripts/average_checkpoints.py \ --inputs ${ASR_SAVE_DIR} --num-epoch-checkpoints 10 \ --output "${ASR_SAVE_DIR}/${CHECKPOINT_FILENAME}" fairseq-generate ${MTEDX_ROOT}/es-es \ --config-yaml config_asr.yaml --gen-subset test --task speech_to_text \ --path ${ASR_SAVE_DIR}/${CHECKPOINT_FILENAME} --max-tokens 50000 --beam 5 \ --skip-invalid-size-inputs-valid-test \ --scoring wer --wer-tokenizer 13a --wer-lowercase --wer-remove-punct --remove-bpe # For models trained on joint data CHECKPOINT_FILENAME=avg_last_10_checkpoint.pt python scripts/average_checkpoints.py \ --inputs ${MULTILINGUAL_ASR_SAVE_DIR} --num-epoch-checkpoints 10 \ --output "${MULTILINGUAL_ASR_SAVE_DIR}/${CHECKPOINT_FILENAME}" for LANG in es fr pt it ru el ar de; do fairseq-generate ${MTEDX_ROOT} \ --config-yaml config_asr.yaml --gen-subset test_${LANG}-${LANG}_asr --task speech_to_text \ --prefix-size 1 --path ${MULTILINGUAL_ASR_SAVE_DIR}/${CHECKPOINT_FILENAME} \ --max-tokens 40000 --beam 5 \ --skip-invalid-size-inputs-valid-test \ --scoring wer --wer-tokenizer 13a --wer-lowercase --wer-remove-punct --remove-bpe done ``` #### Results | Data | --arch | Params | Es | Fr | Pt | It | Ru | El | Ar | De | |--------------|--------------------|--------|------|------|------|------|------|-------|-------|-------| | Monolingual | s2t_transformer_xs | 10M | 46.4 | 45.6 | 54.8 | 48.0 | 74.7 | 109.5 | 104.4 | 111.1 | ## ST #### Training Es-En as example: ```bash fairseq-train ${MTEDX_ROOT}/es-en \ --config-yaml config_st.yaml --train-subset train_st --valid-subset valid_st \ --save-dir ${ST_SAVE_DIR} --num-workers 4 --max-tokens 40000 --max-epoch 200 \ --task speech_to_text --criterion label_smoothed_cross_entropy --report-accuracy \ --arch s2t_transformer_xs --optimizer adam --lr 2e-3 --lr-scheduler inverse_sqrt \ --warmup-updates 10000 --clip-norm 10.0 --seed 1 --dropout 0.3 --label-smoothing 0.1 \ --load-pretrained-encoder-from ${PRETRAINED_ENCODER} \ --skip-invalid-size-inputs-valid-test \ --keep-last-epochs 10 --update-freq 8 --patience 10 ``` For multilingual model (all 12 directions): ```bash fairseq-train ${MTEDX_ROOT} \ --config-yaml config_st.yaml \ --train-subset train_el-en_st,train_es-en_st,train_es-fr_st,train_es-it_st,train_es-pt_st,train_fr-en_st,train_fr-es_st,train_fr-pt_st,train_it-en_st,train_it-es_st,train_pt-en_st,train_pt-es_st,train_ru-en_st \ --valid-subset valid_el-en_st,valid_es-en_st,valid_es-fr_st,valid_es-it_st,valid_es-pt_st,valid_fr-en_st,valid_fr-es_st,valid_fr-pt_st,valid_it-en_st,valid_it-es_st,valid_pt-en_st,valid_pt-es_st,valid_ru-en_st \ --save-dir ${MULTILINGUAL_ST_SAVE_DIR} --num-workers 4 --max-tokens 40000 --max-epoch 200 \ --task speech_to_text --criterion label_smoothed_cross_entropy --report-accuracy \ --arch s2t_transformer_s --optimizer adam --lr 2e-3 --lr-scheduler inverse_sqrt \ --warmup-updates 10000 --clip-norm 10.0 --seed 1 --dropout 0.3 --label-smoothing 0.1 \ --skip-invalid-size-inputs-valid-test \ --keep-last-epochs 10 --update-freq 8 --patience 10 \ --ignore-prefix-size 1 \ --load-pretrained-encoder-from ${PRETRAINED_ENCODER} ``` where `ST_SAVE_DIR` (`MULTILINGUAL_ST_SAVE_DIR`) is the checkpoint root path. The ST encoder is pre-trained by ASR for faster training and better performance: `--load-pretrained-encoder-from <(JOINT_)ASR checkpoint path>`. We set `--update-freq 8` to simulate 8 GPUs with 1 GPU. You may want to update it accordingly when using more than 1 GPU. For multilingual models, we prepend target language ID token as target BOS, which should be excluded from the training loss via `--ignore-prefix-size 1`. #### Inference & Evaluation Average the last 10 checkpoints and evaluate on the `test` split: ```bash CHECKPOINT_FILENAME=avg_last_10_checkpoint.pt python scripts/average_checkpoints.py \ --inputs ${ST_SAVE_DIR} --num-epoch-checkpoints 10 \ --output "${ST_SAVE_DIR}/${CHECKPOINT_FILENAME}" fairseq-generate ${MTEDX_ROOT}/es-en \ --config-yaml config_st.yaml --gen-subset test --task speech_to_text \ --path ${ST_SAVE_DIR}/${CHECKPOINT_FILENAME} \ --max-tokens 50000 --beam 5 --scoring sacrebleu --remove-bpe # For multilingual models python scripts/average_checkpoints.py \ --inputs ${MULTILINGUAL_ST_SAVE_DIR} --num-epoch-checkpoints 10 \ --output "${MULTILINGUAL_ST_SAVE_DIR}/${CHECKPOINT_FILENAME}" for LANGPAIR in es-en es-fr es-pt fr-en fr-es fr-pt pt-en pt-es it-en it-es ru-en el-en; do fairseq-generate ${MTEDX_ROOT} \ --config-yaml config_st.yaml --gen-subset test_${LANGPAIR}_st --task speech_to_text \ --prefix-size 1 --path ${MULTILINGUAL_ST_SAVE_DIR}/${CHECKPOINT_FILENAME} \ --max-tokens 40000 --beam 5 \ --skip-invalid-size-inputs-valid-test \ --scoring sacrebleu --remove-bpe done ``` For multilingual models, we force decoding from the target language ID token (as BOS) via `--prefix-size 1`. #### Results | Data | --arch | Params | Es-En | Es-Pt | Es-Fr | Fr-En | Fr-Es | Fr-Pt | Pt-En | Pt-Es | It-En | It-Es | Ru-En | El-En | |--------------|--------------------|-----|-------|-------|-------|-------|-------|-------|-------|-------|-------|-------|-------|-------| | Bilingual | s2t_transformer_xs | 10M | 7.0 | 12.2 | 1.7 | 8.9 | 10.6 | 7.9 | 8.1 | 8.7 | 6.4 | 1.0 | 0.7 | 0.6 | | Multilingual | s2t_transformer_s | 31M | 12.3 | 17.4 | 6.1 | 12.0 | 13.6 | 13.2 | 12.0 | 13.7 | 10.7 | 13.1 | 0.6 | 0.8 | ## Citation Please cite as: ``` @misc{salesky2021mtedx, title={Multilingual TEDx Corpus for Speech Recognition and Translation}, author={Elizabeth Salesky and Matthew Wiesner and Jacob Bremerman and Roldano Cattoni and Matteo Negri and Marco Turchi and Douglas W. Oard and Matt Post}, year={2021}, } @inproceedings{wang2020fairseqs2t, title = {fairseq S2T: Fast Speech-to-Text Modeling with fairseq}, author = {Changhan Wang and Yun Tang and Xutai Ma and Anne Wu and Dmytro Okhonko and Juan Pino}, booktitle = {Proceedings of the 2020 Conference of the Asian Chapter of the Association for Computational Linguistics (AACL): System Demonstrations}, year = {2020}, } @inproceedings{ott2019fairseq, title = {fairseq: A Fast, Extensible Toolkit for Sequence Modeling}, author = {Myle Ott and Sergey Edunov and Alexei Baevski and Angela Fan and Sam Gross and Nathan Ng and David Grangier and Michael Auli}, booktitle = {Proceedings of NAACL-HLT 2019: Demonstrations}, year = {2019}, } ``` [[Back]](..)