# InternImage for Semantic Segmentation This folder contains the implementation of the InternImage for semantic segmentation. Our segmentation code is developed on top of [MMSegmentation v0.27.0](https://github.com/open-mmlab/mmsegmentation/tree/v0.27.0). ## Usage ### Install - Clone this repo: ```bash git clone https://github.com/OpenGVLab/InternImage.git cd InternImage ``` - Create a conda virtual environment and activate it: ```bash conda create -n internimage python=3.7 -y conda activate internimage ``` - Install `CUDA>=10.2` with `cudnn>=7` following the [official installation instructions](https://docs.nvidia.com/cuda/cuda-installation-guide-linux/index.html) - Install `PyTorch>=1.10.0` and `torchvision>=0.9.0` with `CUDA>=10.2`: For examples, to install torch==1.11 with CUDA==11.3: ```bash pip install torch==1.11.0+cu113 torchvision==0.12.0+cu113 -f https://download.pytorch.org/whl/torch_stable.html ``` - Install `timm==0.6.11` and `mmcv-full==1.5.0`: ```bash pip install -U openmim mim install mmcv-full==1.5.0 pip install timm==0.6.11 mmdet==2.28.1 ``` - Install other requirements: ```bash pip install opencv-python termcolor yacs pyyaml scipy ``` - Compile CUDA operators ```bash cd ./ops_dcnv3 sh ./make.sh # unit test (should see all checking is True) python test.py ``` - You can also install the operator using .whl files ### Data Preparation Prepare datasets according to the [guidelines](https://github.com/open-mmlab/mmsegmentation/blob/master/docs/en/dataset_prepare.md#prepare-datasets) in MMSegmentation. ### Evaluation To evaluate our `InternImage` on ADE20K val, run: ```bash sh dist_test.sh --eval mIoU ``` For example, to evaluate the `InternImage-T` with a single GPU: ```bash python test.py configs/ade20k/upernet_internimage_t_512_160k_ade20k.py checkpoint_dir/seg/upernet_internimage_t_512_160k_ade20k.pth --eval mIoU ``` For example, to evaluate the `InternImage-B` with a single node with 8 GPUs: ```bash sh dist_test.sh configs/ade20k/upernet_internimage_b_512_160k_ade20k.py checkpoint_dir/seg/upernet_internimage_b_512_160k_ade20k.pth 8 --eval mIoU ``` ### Training To train an `InternImage` on ADE20K, run: ```bash sh dist_train.sh ``` For example, to train `InternImage-T` with 8 GPU on 1 node (total batch size 16), run: ```bash sh dist_train.sh configs/ade20k/upernet_internimage_t_512_160k_ade20k.py 8 ``` ### Manage Jobs with Slurm For example, to train `InternImage-XL` with 8 GPU on 1 node (total batch size 16), run: ```bash GPUS=8 sh slurm_train.sh configs/ade20k/upernet_internimage_xl_640_160k_ade20k.py ``` ### Image Demo To inference a single image like this: ``` CUDA_VISIBLE_DEVICES=0 python image_demo.py \ data/ade/ADEChallengeData2016/images/validation/ADE_val_00000591.jpg \ configs/ade20k/upernet_internimage_t_512_160k_ade20k.py \ checkpoint_dir/seg/upernet_internimage_t_512_160k_ade20k.pth \ --palette ade20k ``` ### Export To export a segmentation model from PyTorch to TensorRT, run: ```shell MODEL="model_name" CKPT_PATH="/path/to/model/ckpt.pth" python deploy.py \ "./deploy/configs/mmseg/segmentation_tensorrt_static-512x512.py" \ "./configs/ade20k/${MODEL}.py" \ "${CKPT_PATH}" \ "./deploy/demo.png" \ --work-dir "./work_dirs/mmseg/${MODEL}" \ --device cuda \ --dump-info ``` For example, to export `upernet_internimage_t_512_160k_ade20k` from PyTorch to TensorRT, run: ```shell MODEL="upernet_internimage_t_512_160k_ade20k" CKPT_PATH="/path/to/model/ckpt/upernet_internimage_t_512_160k_ade20k.pth" python deploy.py \ "./deploy/configs/mmseg/segmentation_tensorrt_static-512x512.py" \ "./configs/ade20k/${MODEL}.py" \ "${CKPT_PATH}" \ "./deploy/demo.png" \ --work-dir "./work_dirs/mmseg/${MODEL}" \ --device cuda \ --dump-info ```