# ADE20k Semantic Segmentation with BEiT ## Getting Started 1. Install the [mmsegmentation](https://github.com/open-mmlab/mmsegmentation) library and some required packages. ```bash pip install mmcv-full==1.3.0 mmsegmentation==0.11.0 pip install scipy timm==0.3.2 ``` 2. Install [apex](https://github.com/NVIDIA/apex) for mixed-precision training ```bash git clone https://github.com/NVIDIA/apex cd apex pip install -v --disable-pip-version-check --no-cache-dir --global-option="--cpp_ext" --global-option="--cuda_ext" ./ ``` 3. Follow the guide in [mmseg](https://github.com/open-mmlab/mmsegmentation/blob/master/docs/en/dataset_prepare.md) to prepare the ADE20k dataset. ## Fine-tuning Command format: ``` tools/dist_train.sh --work-dir --seed 0 --deterministic --options model.pretrained= ``` Using a BEiT-base backbone with UperNet: ```bash bash tools/dist_train.sh \ configs/beit/upernet/upernet_beit_base_12_512_slide_160k_21ktoade20k.py 8 \ --work-dir /path/to/save --seed 0 --deterministic \ --options model.pretrained=https://conversationhub.blob.core.windows.net/beit-share-public/beitv2/beitv2_base_patch16_224_pt1k_ft21k.pth?sv=2021-10-04&st=2023-06-08T11%3A16%3A02Z&se=2033-06-09T11%3A16%3A00Z&sr=c&sp=r&sig=N4pfCVmSeq4L4tS8QbrFVsX6f6q844eft8xSuXdxU48%3D ``` Using a BEiT-large backbone with UperNet: ```bash bash tools/dist_train.sh \ configs/beit/upernet/upernet_beit_large_24_512_slide_160k_21ktoade20k.py 8 \ --work-dir /path/to/save --seed 0 --deterministic \ --options model.pretrained=https://conversationhub.blob.core.windows.net/beit-share-public/beitv2/beitv2_large_patch16_224_pt1k_ft21k.pth?sv=2021-10-04&st=2023-06-08T11%3A16%3A02Z&se=2033-06-09T11%3A16%3A00Z&sr=c&sp=r&sig=N4pfCVmSeq4L4tS8QbrFVsX6f6q844eft8xSuXdxU48%3D ``` ## Evaluation Command format: ``` tools/dist_test.sh --eval mIoU ``` For example, evaluate a BEiT-large backbone with UperNet: ```bash bash tools/dist_test.sh configs/beit/upernet/upernet_beit_large_24_512_slide_160k_21ktoade20k.py \ https://conversationhub.blob.core.windows.net/beit-share-public/beitv2/beitv2_large_patch16_224_pt1k_ft21ktoade20k.pth?sv=2021-10-04&st=2023-06-08T11%3A16%3A02Z&se=2033-06-09T11%3A16%3A00Z&sr=c&sp=r&sig=N4pfCVmSeq4L4tS8QbrFVsX6f6q844eft8xSuXdxU48%3D 4 --eval mIoU ``` Expected results: ``` +--------+-------+-------+-------+ | Scope | mIoU | mAcc | aAcc | +--------+-------+-------+-------+ | global | 57.54 | 68.78 | 86.22 | +--------+-------+-------+-------+ ``` --- ## Acknowledgment This code is built using the [mmsegmentation](https://github.com/open-mmlab/mmsegmentation) library, [Timm](https://github.com/rwightman/pytorch-image-models) library, the [Swin](https://github.com/microsoft/Swin-Transformer) repository, [XCiT](https://github.com/facebookresearch/xcit) and the [SETR](https://github.com/fudan-zvg/SETR) repository.