PaddleClas/docs/en/advanced_tutorials/multilabel/multilabel_en.md

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2021-03-30 17:22:57 +08:00
# Multilabel classification quick start
Based on the [NUS-WIDE-SCENE](https://lms.comp.nus.edu.sg/wp-content/uploads/2019/research/nuswide/NUS-WIDE.html) dataset which is a subset of NUS-WIDE dataset, you can experience multilabel of PaddleClas, include training, evaluation and prediction. Please refer to [Installation](install.md) to install at first.
## Preparation
* Enter PaddleClas directory
```
cd path_to_PaddleClas
```
* Create and enter `dataset/NUS-WIDE-SCENE` directory, download and decompress NUS-WIDE-SCENE dataset
```shell
mkdir dataset/NUS-WIDE-SCENE
cd dataset/NUS-WIDE-SCENE
wget https://paddle-imagenet-models-name.bj.bcebos.com/data/NUS-SCENE-dataset.tar
tar -xf NUS-SCENE-dataset.tar
```
* Return `PaddleClas` root home
```
cd ../../
```
## Environment
### Download pretrained model
You can use the following commands to download the pretrained model of ResNet50_vd.
```bash
mkdir pretrained
cd pretrained
wget https://paddle-imagenet-models-name.bj.bcebos.com/dygraph/ResNet50_vd_pretrained.pdparams
cd ../
```
## Training
```shell
export CUDA_VISIBLE_DEVICES=0
python -m paddle.distributed.launch \
--gpus="0" \
tools/train.py \
-c ./configs/quick_start/ResNet50_vd_multilabel.yaml
```
After training for 10 epochs, the best accuracy over the validation set should be around 0.72.
## Evaluation
```bash
python tools/eval.py \
-c ./configs/quick_start/ResNet50_vd_multilabel.yaml \
-o pretrained_model="./output/ResNet50_vd/best_model/ppcls" \
-o load_static_weights=False
```
The metric of evaluation is based on mAP, which is commonly used in multilabel task to show model perfermance. The mAP over validation set should be around 0.57.
## Prediction
```bash
python tools/infer/infer.py \
-i "./dataset/NUS-WIDE-SCENE/NUS-SCENE-dataset/images/0199_434752251.jpg" \
--model ResNet50_vd \
--pretrained_model "./output/ResNet50_vd/best_model/ppcls" \
--use_gpu True \
--load_static_weights False \
--multilabel True \
--class_num 33
```
You will get multiple output such as the following:
```
class id: 3, probability: 0.6025
class id: 23, probability: 0.5491
class id: 32, probability: 0.7006
```