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# Amphion Evaluation Recipe |
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## Supported Evaluation Metrics |
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Until now, Amphion Evaluation has supported the following objective metrics: |
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- **F0 Modeling**: |
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- F0 Pearson Coefficients (FPC) |
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- F0 Periodicity Root Mean Square Error (PeriodicityRMSE) |
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- F0 Root Mean Square Error (F0RMSE) |
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- Voiced/Unvoiced F1 Score (V/UV F1) |
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- **Energy Modeling**: |
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- Energy Root Mean Square Error (EnergyRMSE) |
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- Energy Pearson Coefficients (EnergyPC) |
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- **Intelligibility**: |
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- Character Error Rate (CER) based on [Whipser](https://github.com/openai/whisper) |
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- Word Error Rate (WER) based on [Whipser](https://github.com/openai/whisper) |
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- **Spectrogram Distortion**: |
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- Frechet Audio Distance (FAD) |
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- Mel Cepstral Distortion (MCD) |
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- Multi-Resolution STFT Distance (MSTFT) |
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- Perceptual Evaluation of Speech Quality (PESQ) |
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- Short Time Objective Intelligibility (STOI) |
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- Scale Invariant Signal to Distortion Ratio (SISDR) |
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- Scale Invariant Signal to Noise Ratio (SISNR) |
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- **Speaker Similarity**: |
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- Cosine similarity based on: |
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- [Rawnet3](https://github.com/Jungjee/RawNet) |
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- [Resemblyzer](https://github.com/resemble-ai/Resemblyzer) |
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- [WavLM](https://huggingface.co/microsoft/wavlm-base-plus-sv) |
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We provide a recipe to demonstrate how to objectively evaluate your generated audios. There are three steps in total: |
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1. Pretrained Models Preparation |
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2. Audio Data Preparation |
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3. Evaluation |
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## 1. Pretrained Models Preparation |
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If you want to calculate `RawNet3` based speaker similarity, you need to download the pretrained model first, as illustrated [here](../../pretrained/README.md). |
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## 2. Audio Data Preparation |
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Prepare reference audios and generated audios in two folders, the `ref_dir` contains the reference audio and the `gen_dir` contains the generated audio. Here is an example. |
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```plaintext |
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┣ {ref_dir} |
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┃ ┣ sample1.wav |
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┃ ┣ sample2.wav |
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┣ {gen_dir} |
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┃ ┣ sample1.wav |
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┃ ┣ sample2.wav |
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``` |
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You have to make sure that the pairwise **reference audio and generated audio are named the same**, as illustrated above (sample1 to sample1, sample2 to sample2). |
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## 3. Evaluation |
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Run the `run.sh` with specified refenrece folder, generated folder, dump folder and metrics. |
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```bash |
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cd Amphion |
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sh egs/metrics/run.sh \ |
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--reference_folder [Your path to the reference audios] \ |
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--generated_folder [Your path to the generated audios] \ |
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--dump_folder [Your path to dump the objective results] \ |
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--metrics [The metrics you need] \ |
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--fs [Optional. To calculate all metrics in the specified sampling rate] \ |
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--similarity_model [Optional. To choose the model for calculating the speaker similarity. Currently "rawnet", "wavlm" and "resemblyzer" are available. Default to "wavlm"] \ |
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--similarity_mode [Optional. To choose the mode for calculating the speaker similarity. "pairwith" for calculating a series of ground truth / prediction audio pairs to obtain the speaker similarity, and "overall" for computing the average score with all possible pairs between the refernece folder and generated folder. Default to "pairwith"] \ |
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--intelligibility_mode [Optionoal. To choose the mode for computing CER and WER. "gt_audio" means selecting the recognition content of the reference audio as the target, "gt_content" means using transcription as the target. Default to "gt_audio"] \ |
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--ltr_path [Optional. Path to the transcription file] \ |
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--language [Optional. Language for computing CER and WER. Default to "english"] |
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``` |
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As for the metrics, an example is provided below: |
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```bash |
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--metrics "mcd pesq fad" |
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``` |
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All currently available metrics keywords are listed below: |
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| Keys | Description | |
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| ------------------------- | ------------------------------------------ | |
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| `fpc` | F0 Pearson Coefficients | |
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| `f0_periodicity_rmse` | F0 Periodicity Root Mean Square Error | |
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| `f0rmse` | F0 Root Mean Square Error | |
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| `v_uv_f1` | Voiced/Unvoiced F1 Score | |
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| `energy_rmse` | Energy Root Mean Square Error | |
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| `energy_pc` | Energy Pearson Coefficients | |
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| `cer` | Character Error Rate | |
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| `wer` | Word Error Rate | |
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| `similarity` | Speaker Similarity |
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| `fad` | Frechet Audio Distance | |
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| `mcd` | Mel Cepstral Distortion | |
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| `mstft` | Multi-Resolution STFT Distance | |
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| `pesq` | Perceptual Evaluation of Speech Quality | |
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| `si_sdr` | Scale Invariant Signal to Distortion Ratio | |
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| `si_snr` | Scale Invariant Signal to Noise Ratio | |
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| `stoi` | Short Time Objective Intelligibility | |
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For example, if want to calculate the speaker similarity between the synthesized audio and the reference audio with the same content, run: |
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```bash |
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sh egs/metrics/run.sh \ |
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--reference_folder [Your path to the reference audios] \ |
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--generated_folder [Your path to the generated audios] \ |
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--dump_folder [Your path to dump the objective results] \ |
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--metrics "similarity" \ |
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--similarity_model [Optional. To choose the model for calculating the speaker similarity. Currently "rawnet", "wavlm" and "resemblyzer" are available. Default to "wavlm"] \ |
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--similarity_mode "pairwith" \ |
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``` |
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If you don't have the reference audio with the same content, run the following to get the conteng-free similarity score: |
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```bash |
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sh egs/metrics/run.sh \ |
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--reference_folder [Your path to the reference audios] \ |
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--generated_folder [Your path to the generated audios] \ |
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--dump_folder [Your path to dump the objective results] \ |
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--metrics "similarity" \ |
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--similarity_model [Optional. To choose the model for calculating the speaker similarity. Currently "rawnet", "wavlm" and "resemblyzer" are available. Default to "wavlm"] \ |
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--similarity_mode "overall" \ |
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``` |
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## Troubleshooting |
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### FAD (Using Offline Models) |
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If your system is unable to access huggingface.co from the terminal, you might run into an error like "OSError: Can't load tokenizer for ...". To work around this, follow these steps to use local models: |
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1. Download the [bert-base-uncased](https://huggingface.co/bert-base-uncased), [roberta-base](https://huggingface.co/roberta-base), and [facebook/bart-base](https://huggingface.co/facebook/bart-base) models from `huggingface.co`. Ensure that the models are complete and uncorrupted. Place these directories within `Amphion/pretrained`. For a detailed file structure reference, see [This README](../../pretrained/README.md#optional-model-dependencies-for-evaluation) under `Amphion/pretrained`. |
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2. Inside the `Amphion/pretrained` directory, create a bash script with the content outlined below. This script will automatically update the tokenizer paths used by your system: |
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```bash |
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#!/bin/bash |
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BERT_DIR="bert-base-uncased" |
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ROBERTA_DIR="roberta-base" |
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BART_DIR="facebook/bart-base" |
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PYTHON_SCRIPT="[YOUR ENV PATH]/lib/python3.9/site-packages/laion_clap/training/data.py" |
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update_tokenizer_path() { |
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local dir_name=$1 |
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local tokenizer_variable=$2 |
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local full_path |
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if [ -d "$dir_name" ]; then |
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full_path=$(realpath "$dir_name") |
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if [ -f "$PYTHON_SCRIPT" ]; then |
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sed -i "s|${tokenizer_variable}.from_pretrained(\".*\")|${tokenizer_variable}.from_pretrained(\"$full_path\")|" "$PYTHON_SCRIPT" |
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echo "Updated ${tokenizer_variable} path to $full_path." |
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else |
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echo "Error: The specified Python script does not exist." |
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exit 1 |
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fi |
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else |
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echo "Error: The directory $dir_name does not exist in the current directory." |
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exit 1 |
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fi |
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} |
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update_tokenizer_path "$BERT_DIR" "BertTokenizer" |
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update_tokenizer_path "$ROBERTA_DIR" "RobertaTokenizer" |
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update_tokenizer_path "$BART_DIR" "BartTokenizer" |
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echo "BERT, BART and RoBERTa Python script paths have been updated." |
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``` |
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3. The script provided is intended to adjust the tokenizer paths in the `data.py` file, found under `/lib/python3.9/site-packages/laion_clap/training/`, within your specific environment. For those utilizing conda, you can determine your environment path by running `conda info --envs`. Then, substitute `[YOUR ENV PATH]` in the script with this path. If your environment is configured differently, you'll need to update the `PYTHON_SCRIPT` variable to correctly point to the `data.py` file. |
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4. Run the script. If it executes successfully, the tokenizer paths will be updated, allowing them to be loaded locally. |
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### WavLM-based Speaker Similarity (Using Offline Models) |
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If your system is unable to access huggingface.co from the terminal and you want to calculate `WavLM` based speaker similarity, you need to download the pretrained model first, as illustrated [here](../../pretrained/README.md). |