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  • Ubuntu16.04从源码安装DensePose

    Installing DensePose

    DensePose官网 http://densepose.org/

    DensePose代码 https://github.com/facebookresearch/Densepose

    DensePose安装系统要求:有NVIDIA GPU的Linux系统,满足这一条件便可按照下面的步骤安装。

    安装Anaconda

    官网下载Linux版的Anaconda3,运行bash Anaconda3-5.2.0-Linux-x86_64.sh

    安装caffe2(pytorch)

    创建caffe2的conda环境

    conda create -n densepose python=2.7
    

    进入新创建的环境

    source activate densepose 
    

    安装一些需要的库

    (densepose)$ conda install -y future gflags leveldb mkl mkl-include numpy opencv protobuf
    (densepose)$ conda install flask graphviz hypothesis jupyter matplotlib pydot pyyaml requests scikit-image scipy setuptools tornado
    

    下载pytorch及其依赖的第三方库

    # git clone --recursive https://github.com/pytorch/pytorch.git 
    (densepose)$ git clone -b v0.4.1 --recursive https://github.com/pytorch/pytorch.git # 下载v0.4.1分支代码
    (densepose)$ cd pytorch
    (densepose)$ git submodule update --init
    

    编译并安装

    (densepose)$ rm -rf build && mkdir build && cd build
    
    (densepose)$ cmake -DCMAKE_PREFIX_PATH=~/anaconda3/envs/densepose -DCMAKE_INSTALL_PREFIX=~/anaconda3/envs/densepose -DUSE_NATIVE_ARCH=ON ..
    
    (densepose)$ make -j32 install
    

    测试是否安装成功

    # To check if Caffe2 build was successful
    (densepose)$ python2 -c 'from caffe2.python import core' 2>/dev/null && echo "Success" || echo "Failure"
    # 输出Success即安装成功,否则失败
    
    # To check if Caffe2 GPU build was successful
    (densepose)$ python2 -c 'from caffe2.python import workspace; print(workspace.NumCudaDevices())'
    # 输出8或者其他,表示显卡个数
    

    安装cocoapi

    # COCOAPI=/path/to/clone/cocoapi
    (densepose)$ git clone https://github.com/cocodataset/cocoapi.git $COCOAPI
    (densepose)$ cd $COCOAPI/PythonAPI
    # Install into global site-packages
    (densepose)$ make install
    # Alternatively, if you do not have permissions or prefer
    # not to install the COCO API into global site-packages
    (densepose)$ python2 setup.py install --user
    

    安装densepose

    安装densepose

    (densepose)$ mkdir $DENSEPOSE_DIR && cd $DENSEPOSE_DIR
    (densepose)$ git clone https://github.com/facebookresearch/densepose
    (densepose)$ cd densepose
    (densepose)$ pip install -r requirements.txt  # install Python dependencies
    
    (densepose)$ make  # set up python modules
    (densepose)$ python2 detectron/tests/test_spatial_narrow_as_op.py  # check that Detectron tests pass
    
    (densepose)$ make ops  # Build the custom operators library
    (densepose)$ python2 detectron/tests/test_zero_even_op.py  # check that the custom operator tests pass
    

    下载densepose数据:

    (densepose)$ cd DensePoseData
    (densepose)$ bash get_densepose_uv.sh
    

    如果需要训练,下载DensePose-COCO数据集:

    (densepose)$ bash get_DensePose_COCO.sh
    

    如果评价(evaluation),还需下载其他需要的文件:

    (densepose)$ bash get_eval_data.sh
    

    Inference with Pretrained Models

    首先从这里下载与DensePose_ResNet101_FPN_s1x-e2e.yaml相匹配的训练好的模型,并放在weights文件夹下,然后执行下面命令:

    (densepose)$ python2 tools/infer_simple.py 
        --cfg configs/DensePose_ResNet101_FPN_s1x-e2e.yaml 
        --output-dir DensePoseData/infer_out/ 
        --image-ext jpg 
        --wts  weights/DensePose_ResNet101_FPN_s1x-e2e.pkl 
        DensePoseData/demo_data/demo_im.jpg
    

    Ref

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  • 原文地址:https://www.cnblogs.com/VVingerfly/p/14353383.html
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