MusicYOLO framework uses the object detection model, YOLOx, to locate notes in the spectrogram.

Overview

MusicYOLO

MusicYOLO framework uses the object detection model, YOLOX, to locate notes in the spectrogram. Its performance on the ISMIR2014 dataset, MIR-ST500 dataset and SSVD dataset show that MusicYOLO significantly improves onset/offset detection compared with previous approaches.

Installation

Step1. Install pytorch.

conda install pytorch==1.8.0 torchvision==0.9.0 torchaudio==0.8.0 cudatoolkit=10.2 -c pytorch

Step1. Install YOLOX.

git clone [email protected]:xk-wang/MusicYOLO.git
cd MusicYOLO
pip3 install -U pip && pip3 install -r requirements.txt
pip3 install -v -e .  # or  python3 setup.py develop

Step2. Install apex.

# skip this step if you don't want to train model.
cd apex
pip3 install -v --disable-pip-version-check --no-cache-dir --global-option="--cpp_ext" .

Step3. Install pycocotools.

pip3 install cython;
cd cocoapi/PythonAPI && pip3 install -v .

Inference

Download the pretrained musicyolo1 and musicyolo2 models described in our paper. Put these two models under the models folder. The models are stored in BaiduYun https://pan.baidu.com/s/1TbE36ydi-6EZXwxo5DwfLg?pwd=1234 code: 1234

SSVD & ISMIR2014

Step1. Download SSVD-v2.0 from https://github.com/xk-wang/SSVD-v2.0

Step2. Onset/offset detection (use musicyolo2.pth)

python3 tools/predict.py -f exps/example/custom/yolox_singing.py -c models/musicyolo2.pth --audiodir $SSVD_TEST_SET_PATH --savedir $SAVE_PATH --ext .flac --device gpu

Step3. Evaluate

python3 tools/note_eval.py --label $SSVD_TEST_SET_PATH --result $SAVE_PATH --offset

Similar process for ISMIR2014 dataset.

MIR-ST500

Since MIR-ST500 dataset is a mixture of vocals and accompaniments, we need to separate vocals and accompaniments with spleeter first. Besides, since the singing duration of each audio in MIR-ST500 dataset is too long, we will first cut each audio into short audios of about 35s for on/offset detection.

Step1. Audio source seperation

python3 tools/util/do_spleeter.py $MIR_ST500_DIR

Step2. Split audio

python3 tools/util/split_mst.py --mst_path $MST_TEST_VOCAL_PATH --dest_dir $SPLIT_PATH

Step3. Onset/offset detection (use musicyolo1.pth)

python3 tools/predict.py -f exps/example/custom/yolox_singing.py -c models/musicyolo1.pth --audiodir $SPLIT_PATH --savedir $SAVE_PATH --ext .wav --device gpu

Step4. Merge results

Because we split the MIR-ST500 test set audio earlier, the results are also splited. Here we merge the split results.

python3 tools/util/merge_res.py --audio_dir $SPLIT_PATH --origin_dir $SAVE_PATH --final_dir $MERGE_PATH

Step5. Evaluate

python3 tools/note_eval.py --label $MIR_ST500_TEST_LABEL_PATH --result $MERGE_PATH --offset

Train yourself

Download yolox-s weight from https://github.com/Megvii-BaseDetection/YOLOX/releases/download/0.1.1rc0/yolox_s.pth . Put the model weight under models folder.

Train on SSVD (get musicyolo2)

Step1. Get SSVD train set

Download SSVD-v2.0 from https://github.com/xk-wang/SSVD-v2.0. Put the images folder under the datasets folder.

Step2. Train

python3 tools/train.py -f exps/example/custom/yolox_singing.py -d 1 -b 16 --fp16 -o -c models/yolox_s.pth

Train on MIR-ST500 (get musicyolo1)

Prepair note object detection dataset

Because there are a few audios for SSVD training set, we use Labelme software to annotate note object manually. There are a lot of data in MIR-ST500 training set, so we design a set of automatic annotation tools.

Step1. Audio source seperation

python3 tools/util/do_spleeter.py $MIR_ST500_TRAIN_DIR

Step2. Split audio

python3 tools/util/split_mst.py --mst_path $MIR_ST500_TRAIN_DIR --dest_dir $TRAIN_SPLIT_PATH

Step3. Automatic annotation

python3 tools/util/automatic_annotation.py --audiodir $TRAIN_SPLIT_PATH --imgdir $MST_NOTE_PATH

Step4. Automatic annotation

Divide the training set and validation set by yourself. We break up the images and divide them according to the ratio of 7:3 to get the training set and validation set. The images and annotations are put under $YOU_MIR_ST500_IMAGES folder.

Step4. Coco dataset format

The MIR-st500 note object detection dataset is organized in a format similar to the images folder in SSVD v2.0 dataset.

python3 tools/util/labelme2coco.py --annotationpath $YOU_MIR_ST500_IMAGES/train --jsonpath $IMAGE_DIR/train/_annotations.coco.json

python3 tools/util/labelme2coco.py --annotationpath $YOU_MIR_ST500_IMAGES/valid --jsonpath $IMAGE_DIR/valid/_annotations.coco.json

then put the MIR-ST500 note object detection dataset under the datasets folder like SSVD.

Train

the similar process like training on SSVD dataset.

Citation

 @article{yolox2021,
  title={YOLOX: Exceeding YOLO Series in 2021},
  author={Ge, Zheng and Liu, Songtao and Wang, Feng and Li, Zeming and Sun, Jian},
  journal={arXiv preprint arXiv:2107.08430},
  year={2021}
}

@inproceedings{musicyolo2022,
  title={A SIGHT-SINGING ONSET/OFFSET DETECTION FRAMEWORK BASED ON OBJECT DETECTION INSTEAD OF SPECTRUM FRAMES.},
  author={X. Wang, W. Xu, W. Yang and W. Cheng},
  booktitle={IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)},
  pages={},
  year={2022},
}
Owner
Xianke Wang
Stay hungry stay foolish!
Xianke Wang
Styleformer - Official Pytorch Implementation

Styleformer -- Official PyTorch implementation Styleformer: Transformer based Generative Adversarial Networks with Style Vector(https://arxiv.org/abs/

Jeeseung Park 159 Dec 12, 2022
RGB-stacking 🛑 🟩 🔷 for robotic manipulation

RGB-stacking 🛑 🟩 🔷 for robotic manipulation BLOG | PAPER | VIDEO Beyond Pick-and-Place: Tackling Robotic Stacking of Diverse Shapes, Alex X. Lee*,

DeepMind 95 Dec 23, 2022
Group-Free 3D Object Detection via Transformers

Group-Free 3D Object Detection via Transformers By Ze Liu, Zheng Zhang, Yue Cao, Han Hu, Xin Tong. This repo is the official implementation of "Group-

Ze Liu 213 Dec 07, 2022
FluidNet re-written with ATen tensor lib

fluidnet_cxx: Accelerating Fluid Simulation with Convolutional Neural Networks. A PyTorch/ATen Implementation. This repository is based on the paper,

JoliBrain 50 Jun 07, 2022
A fast poisson image editing implementation that can utilize multi-core CPU or GPU to handle a high-resolution image input.

Poisson Image Editing - A Parallel Implementation Jiayi Weng (jiayiwen), Zixu Chen (zixuc) Poisson Image Editing is a technique that can fuse two imag

Jiayi Weng 110 Dec 27, 2022
A mini-course offered to Undergrad chemistry students

The best way to use this material is by forking it by click the Fork button at the top, right corner. Then you will get your own copy to play with! Th

Raghu 19 Dec 19, 2022
A simple algorithm for extracting tree height in sparse scene from point cloud data.

TREE HEIGHT EXTRACTION IN SPARSE SCENES BASED ON UAV REMOTE SENSING This is the offical python implementation of the paper "Tree Height Extraction in

6 Oct 28, 2022
Pytorch Implementation of LNSNet for Superpixel Segmentation

LNSNet Overview Official implementation of Learning the Superpixel in a Non-iterative and Lifelong Manner (CVPR'21) Learning Strategy The proposed LNS

42 Oct 11, 2022
This repo contains the code and data used in the paper "Wizard of Search Engine: Access to Information Through Conversations with Search Engines"

Wizard of Search Engine: Access to Information Through Conversations with Search Engines by Pengjie Ren, Zhongkun Liu, Xiaomeng Song, Hongtao Tian, Zh

19 Oct 27, 2022
Autonomous Robots Kalman Filters

Autonomous Robots Kalman Filters The Kalman Filter is an easy topic. However, ma

20 Jul 18, 2022
Aiming at the common training datsets split, spectrum preprocessing, wavelength select and calibration models algorithm involved in the spectral analysis process

Aiming at the common training datsets split, spectrum preprocessing, wavelength select and calibration models algorithm involved in the spectral analysis process, a complete algorithm library is esta

Fu Pengyou 50 Jan 07, 2023
SegTransVAE: Hybrid CNN - Transformer with Regularization for medical image segmentation

SegTransVAE: Hybrid CNN - Transformer with Regularization for medical image segmentation This repo is the official implementation for SegTransVAE. Seg

Nguyen Truong Hai 4 Aug 04, 2022
InsightFace: 2D and 3D Face Analysis Project on MXNet and PyTorch

InsightFace: 2D and 3D Face Analysis Project on MXNet and PyTorch

Deep Insight 13.2k Jan 06, 2023
Sudoku solver - A sudoku solver with python

sudoku_solver A sudoku solver What is Sudoku? Sudoku (Japanese: 数独, romanized: s

Sikai Lu 0 May 22, 2022
WPPNets: Unsupervised CNN Training with Wasserstein Patch Priors for Image Superresolution

WPPNets: Unsupervised CNN Training with Wasserstein Patch Priors for Image Superresolution This code belongs to the paper [1] available at https://arx

Fabian Altekrueger 5 Jun 02, 2022
Huawei Hackathon 2021 - Sweden (Stockholm)

huawei-hackathon-2021 Contributors DrakeAxelrod Challenge Requirements: python=3.8.10 Standard libraries (no importing) Important factors: Data depend

Drake Axelrod 32 Nov 08, 2022
Implementation of the Chamfer Distance as a module for pyTorch

Chamfer Distance for pyTorch This is an implementation of the Chamfer Distance as a module for pyTorch. It is written as a custom C++/CUDA extension.

Christian Diller 205 Jan 05, 2023
A treasure chest for visual recognition powered by PaddlePaddle

简体中文 | English PaddleClas 简介 飞桨图像识别套件PaddleClas是飞桨为工业界和学术界所准备的一个图像识别任务的工具集,助力使用者训练出更好的视觉模型和应用落地。 近期更新 2021.11.1 发布PP-ShiTu技术报告,新增饮料识别demo 2021.10.23 发

4.6k Dec 31, 2022
Orthogonal Over-Parameterized Training

The inductive bias of a neural network is largely determined by the architecture and the training algorithm. To achieve good generalization, how to effectively train a neural network is of great impo

Weiyang Liu 11 Apr 18, 2022
Open-source Monocular Python HawkEye for Tennis

Tennis Tracking 🎾 Objectives Track the ball Detect court lines Detect the players To track the ball we used TrackNet - deep learning network for trac

ArtLabs 188 Jan 08, 2023