Chimera: Learning Shared Semantic Space for Speech-to-Text Translation
This is a Pytorch implementation for the "Chimera" paper Learning Shared Semantic Space for Speech-to-Text Translation https://arxiv.org/abs/2105.03095 (accepted by ACL Findings 2021), which aims to bridge the modality gap by unifying the task of MT (textual Machine Translation) and ST (Speech-to-Text Translation). It has achieved new SOTA performance on all 8 language pairs in MuST-C benchmark, by utilizing an external MT corpus.
This repository is up to now a nightly version, and is bug-prone because of code refactoring. Also it is not fully tested on configurations other than the authors' working environment yet. However, we encourage you to first have a look at the results and model codes to get a general impression of what this project is about.
The code base is forked from FairSeq repository https://github.com/pytorch/fairseq.git (without an actual forking operation) in Septempber 2020. It than lags behind the later updates in FairSeq, and both the codes and checkpoints are not compatible with currect Fairseq version. You will need to modify the model codes for checkpoint configurations if you want to follow the new FairSeq codes.
CONTRIBUTION: You are also more than welcomed to test our code on your machines, and report feedbacks on results, bugs and performance!
Results
Our model (Chimera) achieves new state-of-the-art results on all 8 language pairs on MuST-C:
Direction | EN-DE | EN-FR | EN-RU | EN-ES | EN-IT | EN-RO | EN-PT | EN-NL |
---|---|---|---|---|---|---|---|---|
BLEU | 26.3 | 35.6 | 17.4 | 30.6 | 25.0 | 24.0 | 30.2 | 29.2 |
Chimera novelly learns M distinct "memories" to store specific types of semantic information from both audio and text inputs. Shown below is a visualization of the "Memories" learned by Chimera-16, which is a variant with M = 16. Each learned cluster represents a individual type of information, while each marker is a sentence sample. "+" and "." means text and audio samples, respectively.
We can see more clearly from below (left) that memories learn a well-clustered semantic space, forming a "semantic" alignment (rather than spatial) between audio and text inputs, while ignoring the modality differences.
On the right, we zoom in to focus one cluster in specific, and it can be easily observed that the vectors are well structured as well, with inputs with (probably one of) similar semantic features close in space to each other.
We can even focus on one instance of translation, and see how the memories works. Shown below visualizes the alignment between audio attention and text attention, which tightly gather around the diagonal line. Different colors represents different memories, which attend to different semantic segments of sentence / audio as shown in the figure.
Trained Checkpoints
Our trained checkpoints are available at:
Interactive Translation
You can download any one checkpoint mentioned above to local, and translate local audios (only .wav files supported) to another language! To do this, you only need to run the model in an interactive mode. For example, you want to translate from English to Deutsh (DE) with an already trained checkpoint at $CHECKPOINT:
bash run.sh --script chimera/scripts/interactive-en2any-ST.sh \
--target de --checkpoint $CHECKPOINT
The program will prompt an input file name like this:
2021-04-02 10:00:00 | INFO | fairseq_cli.interactive | Type the input sentence and press return:
After inputing the file name, the program will translate outputs like:
H-0 -1.0 ▁Nach ▁dem ...
D-0 -1.0 Nach dem ...
P-0 -1.0000 -1.0000 ...
NOTE: Do not input a file too large. Normally the model can translate 1~5 normal-length sentences in one time. If the input sentence is too long, the program could crash.
To exit the interactive mode, you only need to input an invalid file name.
To translate to other languages, remember to replace de
with their language codes (in lower case):
Language | Code |
---|---|
Deutsch (German) | DE / de |
French | FR / fr |
Espanol (Spanish) | ES / es |
Russian | RU / ru |
Italiano (Italian) | IT / it |
Romanian | RO / ro |
Portuguese | PT / pt |
Dutch (Netherlands) | NL / nl |
Training a Model on MuST-C
Let's first take a look at training an English-to-Deutsch model as an example.
Data Preparation
- Prerequisites and Configuration First check that requirements are met for
pip
inrequirements.txt
and forapt
inapt-requirements.txt
. Some items in the two files may be redundant, but we haven't got time to check and eliminate them.
For configuration, please set the global variables of $WMT_ROOT
, $MUSTC_ROOT
and SAVE_ROOT
These will be where to put the datasets and checkpoints. For example:
export MUSTC_ROOT="speech_data/mustc"
export WMT_ROOT="wmt_data"
export SAVE_ROOT="checkpoints"
export target=de
mkdir -p $MUSTC_ROOT $WMT_ROOT $SAVE_ROOT
NOTE: This simple configuration is a prerequisite for most of the following steps. Here export target=de
means the translation direction is English to Deutsch.
-
Download and uncompress the EN-to-DE MuST-C dataset to
$MUSTC_ROOT/en-$target
. TIP: to speed up uncompressing a file too large, you can replacetar xzvf
with:pigz -dc $TARFILE | tar xvf -
-
Download the WMT to
$WMT_ROOT/orig
via:
bash chimera/prepare_data/download-wmt.sh --wmt14 --data-dir $WMT_ROOT --target $target
This may sometimes be too slow as the connection to statmt.org
is not steady in some places. In this case you can turn to other faster download sources if possible.
- Append MuST-C text data to $WMT_ROOT, and prepare the datasets and produce a joint spm dictionary:
bash chimera/prepare_data/prepare-wmt-en2any.sh \
--data-dir $WMT_ROOT --wmt14 --original-dev \
--external mustc --target $target --subword spm
python3 chimera/prepare_data/prep_mustc_data.py \
--data-root $MUSTC_ROOT --task wave \
--ignore_fbank80 --joint_spm wmt14-en-$target-spm \
--languages $target --vocab-type unigram --vocab-size 10000
NOTE: if the first command is executed correctly, you will see one line in the output:
Existing spm dictionary chimera/resources/wmt14-en-de-spm detected. Copying...
If not, the program will still produce one dictionary on the run and reports No existing spm detected. Learning unigram spm on wmt14_en_de/tmp/train.de-en ...
This is okay in most cases, with the only risk being a potential mismatch to already trained checkpoints we provided.
Training
To reproduce the results in the last row in Figure 1 in paper, you can directly use the training scripts available as follows.
- Pre-training on MT data:
bash run.sh --script chimera/scripts/train-en2any-MT.sh \
--target $target --dataset wmt14 --max_updates 500000
If you like, you can specify some arguments other than default values. The default setting is --seed 1 --num-gpus 8
, which makes the command look like bash run.sh --script chimera/scripts/train-en2$target-MT.sh --seed 1 --num-gpus 8
. Value for --num-gpus
is recommended to be power of 2, and smaller than 8, e.g. {1, 2, 4, 8}.
- Fine-tuning on MuST-C data:
bash run.sh --script chimera/scripts/train-en2any-ST.sh \
--target $target --dataset wmt14 --max_updates 150000
This script moves the MT-pre-trained model from ${MT_SAVE_DIR}/checkpoint_best.pt
to ${ST_SAVE_DIR}
as a initialization for ST fine-tuning.
Optionally, if you need to resume a single ST training, you can add argument --resume
to the command to avoid overwriting the existing ${ST_SAVE_DIR}/checkpoint_last.pt
.
The scripts in step 4 and 5 forks a separate background evaluation process while running. The process monitors $MT_SAVE_ROOT
or $ST_SAVE_ROOT
and evaluates any new checkpoints. Don't worry, it will be automatically killed after the training finishes, unless the script is Ctrl-C'ed, in which case, you can manually raise the suicide flag by touch chimera/tools/auto-generate-suicide.code
to kill the background generation process.
Note that this automatic process only evaluates a single checkpoint (with no averaging), and with a low beam width.
- Averaging Checkpoints and Evaluate It
Suppose the best ST checkpoint is at epoch $BEST_EPOCH
, and we want to averaging 7 checkpoints around it.
python3 chimera/tools/eval-average-checkpoint.py \
--ckpt-dir $ST_SAVE_ROOT --number-of-ckpts 7 \
--center-of-ckpts $BEST_EPOCH
Other Language Pairs
For language pairs English-to-{French, Russian, Espanol}, you only need to replace the export target=de
with {fr
, ru
, es
} in step 0, and then run the steps 1~5.
For language pairs English-to-{Italiano, Portuguese, Dutch, Romanian}, the MT data is different, so we need to modify Step 2 and 3. All other Steps remains unchanged.
English to Romanian
For Romanian, we use WMT16 corpora in our paper.
The Step 2 changes to
bash chimera/prepare_data/download-wmt.sh --wmt16 --data-dir $WMT_ROOT --target ro
Step 3 remains unchanged.
English to {Italiano, Portuguese, Dutch}
These language pairs uses OPUS100 as external MT corpora.
The Step 2 changes to
bash chimera/prepare_data/download-opus100.sh --data-dir $WMT_ROOT
Step 3 changes to
bash chimera/prepare_data/prepare-opus100-en2any.sh \
--data-dir $WMT_ROOT --original-dev \
--external mustc --target $target --subword spm
python3 chimera/prepare_data/prep_mustc_data.py \
--data-root $MUSTC_ROOT --task wave \
--ignore_fbank80 --joint_spm wmt14-en-$target-spm \
--languages $target --vocab-type unigram --vocab-size 10000
Actually, only the first command of Step 3 changes.
Evaluating a Checkpoint
You can also manually evaluate the performance of any one checkpoint on MuST-C test set. Suppose the path to your checkpoint is $CHECKPOINT
target=de bash chimera/generate/generate-mustc-final.sh $CHECKPOINT
License
Part of codes (especially codes outside chimera/
) is adapted from FAIRSEQ code base, therefore carrying the MIT License of its original codes. See NOTICE.md
for more details.
Citation
Please cite as:
@article{han2021learning,
title={Learning Shared Semantic Space for Speech-to-Text Translation},
author={Han, Chi and Wang, Mingxuan and Ji, Heng and Li, Lei},
journal={arXiv preprint arXiv:2105.03095},
year={2021}
}