# Prerequisites - Linux or macOS (Windows is not currently officially supported) - Python 3.6+ - PyTorch 1.3+ - CUDA 9.2+ (If you build PyTorch from source, CUDA 9.0 is also compatible) - GCC 5+ - [MMCV](https://mmcv.readthedocs.io/en/latest/#installation) The required versions of MMCV, MMDetection and MMSegmentation for different versions of MMDetection3D are as below. Please install the correct version of MMCV, MMDetection and MMSegmentation to avoid installation issues. | MMDetection3D version | MMDetection version | MMSegmentation version | MMCV version | |:-------------------:|:-------------------:|:-------------------:|:-------------------:| | master | mmdet>=2.19.0, <=3.0.0| mmseg>=0.20.0, <=1.0.0 | mmcv-full>=1.3.8, <=1.5.0| | v1.0.0rc0 | mmdet>=2.19.0, <=3.0.0| mmseg>=0.20.0, <=1.0.0 | mmcv-full>=1.3.8, <=1.5.0| | 0.18.1 | mmdet>=2.19.0, <=3.0.0| mmseg>=0.20.0, <=1.0.0 | mmcv-full>=1.3.8, <=1.5.0| | 0.18.0 | mmdet>=2.19.0, <=3.0.0| mmseg>=0.20.0, <=1.0.0 | mmcv-full>=1.3.8, <=1.5.0| | 0.17.3 | mmdet>=2.14.0, <=3.0.0| mmseg>=0.14.1, <=1.0.0 | mmcv-full>=1.3.8, <=1.4.0| | 0.17.2 | mmdet>=2.14.0, <=3.0.0| mmseg>=0.14.1, <=1.0.0 | mmcv-full>=1.3.8, <=1.4.0| | 0.17.1 | mmdet>=2.14.0, <=3.0.0| mmseg>=0.14.1, <=1.0.0 | mmcv-full>=1.3.8, <=1.4.0| | 0.17.0 | mmdet>=2.14.0, <=3.0.0| mmseg>=0.14.1, <=1.0.0 | mmcv-full>=1.3.8, <=1.4.0| | 0.16.0 | mmdet>=2.14.0, <=3.0.0| mmseg>=0.14.1, <=1.0.0 | mmcv-full>=1.3.8, <=1.4.0| | 0.15.0 | mmdet>=2.14.0, <=3.0.0| mmseg>=0.14.1, <=1.0.0 | mmcv-full>=1.3.8, <=1.4.0| | 0.14.0 | mmdet>=2.10.0, <=2.11.0| mmseg==0.14.0 | mmcv-full>=1.3.1, <=1.4.0| | 0.13.0 | mmdet>=2.10.0, <=2.11.0| Not required | mmcv-full>=1.2.4, <=1.4.0| | 0.12.0 | mmdet>=2.5.0, <=2.11.0 | Not required | mmcv-full>=1.2.4, <=1.4.0| | 0.11.0 | mmdet>=2.5.0, <=2.11.0 | Not required | mmcv-full>=1.2.4, <=1.3.0| | 0.10.0 | mmdet>=2.5.0, <=2.11.0 | Not required | mmcv-full>=1.2.4, <=1.3.0| | 0.9.0 | mmdet>=2.5.0, <=2.11.0 | Not required | mmcv-full>=1.2.4, <=1.3.0| | 0.8.0 | mmdet>=2.5.0, <=2.11.0 | Not required | mmcv-full>=1.1.5, <=1.3.0| | 0.7.0 | mmdet>=2.5.0, <=2.11.0 | Not required | mmcv-full>=1.1.5, <=1.3.0| | 0.6.0 | mmdet>=2.4.0, <=2.11.0 | Not required | mmcv-full>=1.1.3, <=1.2.0| | 0.5.0 | 2.3.0 | Not required | mmcv-full==1.0.5| # Installation ## Install MMDetection3D **a. Create a conda virtual environment and activate it.** ```shell conda create -n open-mmlab python=3.7 -y conda activate open-mmlab ``` **b. Install PyTorch and torchvision following the [official instructions](https://pytorch.org/).** ```shell conda install pytorch torchvision -c pytorch ``` Note: Make sure that your compilation CUDA version and runtime CUDA version match. You can check the supported CUDA version for precompiled packages on the [PyTorch website](https://pytorch.org/). `E.g. 1` If you have CUDA 10.1 installed under `/usr/local/cuda` and would like to install PyTorch 1.5, you need to install the prebuilt PyTorch with CUDA 10.1. ```python conda install pytorch==1.5.0 cudatoolkit=10.1 torchvision==0.6.0 -c pytorch ``` `E.g. 2` If you have CUDA 9.2 installed under `/usr/local/cuda` and would like to install PyTorch 1.3.1., you need to install the prebuilt PyTorch with CUDA 9.2. ```python conda install pytorch=1.3.1 cudatoolkit=9.2 torchvision=0.4.2 -c pytorch ``` If you build PyTorch from source instead of installing the prebuilt package, you can use more CUDA versions such as 9.0. **c. Install [MMCV](https://mmcv.readthedocs.io/en/latest/).** *mmcv-full* is necessary since MMDetection3D relies on MMDetection, CUDA ops in *mmcv-full* are required. `e.g.` The pre-build *mmcv-full* could be installed by running: (available versions could be found [here](https://mmcv.readthedocs.io/en/latest/#install-with-pip)) ```shell pip install mmcv-full -f https://download.openmmlab.com/mmcv/dist/{cu_version}/{torch_version}/index.html ``` Please replace `{cu_version}` and `{torch_version}` in the url to your desired one. For example, to install the latest `mmcv-full` with `CUDA 11` and `PyTorch 1.7.0`, use the following command: ```shell pip install mmcv-full -f https://download.openmmlab.com/mmcv/dist/cu110/torch1.7.0/index.html ``` mmcv-full is only compiled on PyTorch 1.x.0 because the compatibility usually holds between 1.x.0 and 1.x.1. If your PyTorch version is 1.x.1, you can install mmcv-full compiled with PyTorch 1.x.0 and it usually works well. ```shell # We can ignore the micro version of PyTorch pip install mmcv-full -f https://download.openmmlab.com/mmcv/dist/cu110/torch1.7/index.html ``` See [here](https://github.com/open-mmlab/mmcv#install-with-pip) for different versions of MMCV compatible to different PyTorch and CUDA versions. Optionally, you could also build the full version from source: ```shell git clone https://github.com/open-mmlab/mmcv.git cd mmcv MMCV_WITH_OPS=1 pip install -e . # package mmcv-full will be installed after this step cd .. ``` Or directly run ```shell pip install mmcv-full ``` **d. Install [MMDetection](https://github.com/open-mmlab/mmdetection).** ```shell pip install mmdet==2.14.0 ``` Optionally, you could also build MMDetection from source in case you want to modify the code: ```shell git clone https://github.com/open-mmlab/mmdetection.git cd mmdetection git checkout v2.14.0 # switch to v2.14.0 branch pip install -r requirements/build.txt pip install -v -e . # or "python setup.py develop" ``` **e. Install [MMSegmentation](https://github.com/open-mmlab/mmsegmentation).** ```shell pip install mmsegmentation==0.14.1 ``` Optionally, you could also build MMSegmentation from source in case you want to modify the code: ```shell git clone https://github.com/open-mmlab/mmsegmentation.git cd mmsegmentation git checkout v0.14.1 # switch to v0.14.1 branch pip install -e . # or "python setup.py develop" ``` **f. Clone the MMDetection3D repository.** ```shell git clone https://github.com/open-mmlab/mmdetection3d.git cd mmdetection3d ``` **g.Install build requirements and then install MMDetection3D.** ```shell pip install -v -e . # or "python setup.py develop" ``` Note: 1. The git commit id will be written to the version number with step d, e.g. 0.6.0+2e7045c. The version will also be saved in trained models. It is recommended that you run step d each time you pull some updates from github. If C++/CUDA codes are modified, then this step is compulsory. > Important: Be sure to remove the `./build` folder if you reinstall mmdet with a different CUDA/PyTorch version. ```shell pip uninstall mmdet3d rm -rf ./build find . -name "*.so" | xargs rm ``` 2. Following the above instructions, MMDetection3D is installed on `dev` mode, any local modifications made to the code will take effect without the need to reinstall it (unless you submit some commits and want to update the version number). 3. If you would like to use `opencv-python-headless` instead of `opencv-python`, you can install it before installing MMCV. 4. Some dependencies are optional. Simply running `pip install -v -e .` will only install the minimum runtime requirements. To use optional dependencies like `albumentations` and `imagecorruptions` either install them manually with `pip install -r requirements/optional.txt` or specify desired extras when calling `pip` (e.g. `pip install -v -e .[optional]`). Valid keys for the extras field are: `all`, `tests`, `build`, and `optional`. 5. The code can not be built for CPU only environment (where CUDA isn't available) for now. ## Another option: Docker Image We provide a [Dockerfile](https://github.com/open-mmlab/mmdetection3d/blob/master/docker/Dockerfile) to build an image. ```shell # build an image with PyTorch 1.6, CUDA 10.1 docker build -t mmdetection3d -f docker/Dockerfile . ``` Run it with ```shell docker run --gpus all --shm-size=8g -it -v {DATA_DIR}:/mmdetection3d/data mmdetection3d ``` ## A from-scratch setup script Here is a full script for setting up MMdetection3D with conda. ```shell conda create -n open-mmlab python=3.7 -y conda activate open-mmlab # install latest PyTorch prebuilt with the default prebuilt CUDA version (usually the latest) conda install -c pytorch pytorch torchvision -y # install mmcv pip install mmcv-full # install mmdetection pip install git+https://github.com/open-mmlab/mmdetection.git # install mmsegmentation pip install git+https://github.com/open-mmlab/mmsegmentation.git # install mmdetection3d git clone https://github.com/open-mmlab/mmdetection3d.git cd mmdetection3d pip install -v -e . ``` ## Using multiple MMDetection3D versions The train and test scripts already modify the `PYTHONPATH` to ensure the script use the MMDetection3D in the current directory. To use the default MMDetection3D installed in the environment rather than that you are working with, you can remove the following line in those scripts ```shell PYTHONPATH="$(dirname $0)/..":$PYTHONPATH ``` # Verification ## Verify with point cloud demo We provide several demo scripts to test a single sample. Pre-trained models can be downloaded from [model zoo](model_zoo.md). To test a single-modality 3D detection on point cloud scenes: ```shell python demo/pcd_demo.py ${PCD_FILE} ${CONFIG_FILE} ${CHECKPOINT_FILE} [--device ${GPU_ID}] [--score-thr ${SCORE_THR}] [--out-dir ${OUT_DIR}] ``` Examples: ```shell python demo/pcd_demo.py demo/data/kitti/kitti_000008.bin configs/second/hv_second_secfpn_6x8_80e_kitti-3d-car.py checkpoints/hv_second_secfpn_6x8_80e_kitti-3d-car_20200620_230238-393f000c.pth ``` If you want to input a `ply` file, you can use the following function and convert it to `bin` format. Then you can use the converted `bin` file to generate demo. Note that you need to install `pandas` and `plyfile` before using this script. This function can also be used for data preprocessing for training ```ply data```. ```python import numpy as np import pandas as pd from plyfile import PlyData def convert_ply(input_path, output_path): plydata = PlyData.read(input_path) # read file data = plydata.elements[0].data # read data data_pd = pd.DataFrame(data) # convert to DataFrame data_np = np.zeros(data_pd.shape, dtype=np.float) # initialize array to store data property_names = data[0].dtype.names # read names of properties for i, name in enumerate( property_names): # read data by property data_np[:, i] = data_pd[name] data_np.astype(np.float32).tofile(output_path) ``` Examples: ```python convert_ply('./test.ply', './test.bin') ``` If you have point clouds in other format (`off`, `obj`, etc.), you can use `trimesh` to convert them into `ply`. ```python import trimesh def to_ply(input_path, output_path, original_type): mesh = trimesh.load(input_path, file_type=original_type) # read file mesh.export(output_path, file_type='ply') # convert to ply ``` Examples: ```python to_ply('./test.obj', './test.ply', 'obj') ``` More demos about single/multi-modality and indoor/outdoor 3D detection can be found in [demo](demo.md). ## High-level APIs for testing point clouds ### Synchronous interface Here is an example of building the model and test given point clouds. ```python from mmdet3d.apis import init_model, inference_detector config_file = 'configs/votenet/votenet_8x8_scannet-3d-18class.py' checkpoint_file = 'checkpoints/votenet_8x8_scannet-3d-18class_20200620_230238-2cea9c3a.pth' # build the model from a config file and a checkpoint file model = init_model(config_file, checkpoint_file, device='cuda:0') # test a single image and show the results point_cloud = 'test.bin' result, data = inference_detector(model, point_cloud) # visualize the results and save the results in 'results' folder model.show_results(data, result, out_dir='results') ```