# FastAttr in FastReID This project provides a strong baseline for pedestrian attribute recognition. ## Datasets Preparation We use `PA100k` to evaluate the model's performance. You can do download dataset from [HydraPlus-Net](https://github.com/xh-liu/HydraPlus-Net). ## Usage The training config file can be found in `projects/FastAttr/config`, which you can use to reproduce the results of the repo. For example ```bash python3 projects/FastAttr/train_net.py --config-file projects/FastAttr/configs/pa100.yml --num-gpus 4 ``` ## Experiment Results We refer to [A Strong Baseline of Pedestrian Attribute Recognition](https://github.com/valencebond/Strong_Baseline_of_Pedestrian_Attribute_Recognition/tree/master) as our baseline methods and conduct the experiment with 4 GPUs. More details can be found in the config file and code. ### PA100k | Method | Pretrained | mA | Accu | Prec | Recall | F1 | | :---: | :---: | :---: |:---: | :---: | :---: | :---: | | attribute baseline | ImageNet | 80.50 | 78.84 | 87.24 | 87.12 | 86.78 | | FastAttr | ImageNet | 77.57 | 78.03 | 88.39 | 84.98 | 86.65 |