M3DSSD: Monocular 3D Single Stage Object Detector

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Deep LearningM3DSSD
Overview

M3DSSD: Monocular 3D Single Stage Object Detector

Setup

  • pytorch 0.4.1

  • Preparation

    Download the full KITTI detection dataset. Then place a softlink (or the actual data) in M3DSSD/data/kitti*.

     cd M3DSSD
     ln -s /path/to/kitti data/kitti

    Then use the following scripts to extract the data splits, which use softlinks to the above directory for efficient storage.

    # extract the data splits
    python data/kitti_split1/setup_split.py
    
    # build  the KITTI devkit eval for each split.
    sh data/kitti_split1/devkit/cpp/build.sh

    Build the nms modules

    cd lib/nms
    make
    

    Build the DCN modules

    cd model/DCNv2
    sh ./make.sh
    

Training

Review the configurations in scripts/config for details.

python scripts/train_rpn_3d.py --config=kitti_3d_base --exp_name base
  • Tips: It is recommended to load a pre-trained model when training with feature alignment.

Testing

Modify the conf_path and weights_path to run test.

python scripts/test_rpn_3d.py

Acknowledgements

Owner
mumianyuxin
mumianyuxin
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