Here we provide a quick demo to test a pretrained model on the custom point cloud data and visualize the predicted results.
We suppose you already followed the INSTALL.md to install the OpenPCDet
repo successfully.
-
Download the provided pretrained models as shown in the README.md.
-
Make sure you have already installed the
mayavi
visualization tools. If not, you could install it as follows:pip install mayavi
-
Prepare your custom point cloud data (skip this step if you use the original KITTI data).
- You need to transform the coordinate of your custom point cloud to
the unified normative coordinate of
OpenPCDet
, that is, x-axis points towards to front direction, y-axis points towards to the left direction, and z-axis points towards to the top direction. - (Optional) the z-axis origin of your point cloud coordinate should be about 1.6m above the ground surface, since currently the provided models are trained on the KITTI dataset.
- Set the intensity information, and save your transformed custom data to
numpy file
:
# Transform your point cloud data ... # Save it to the file. # The shape of points should be (num_points, 4), that is [x, y, z, intensity] (Only for KITTI dataset). # If you doesn't have the intensity information, just set them to zeros. # If you have the intensity information, you should normalize them to [0, 1]. points[:, 3] = 0 np.save(`my_data.npy`, points)
- You need to transform the coordinate of your custom point cloud to
the unified normative coordinate of
-
Run the demo with a pretrained model (e.g. PV-RCNN) and your custom point cloud data as follows:
python demo.py --cfg_file cfgs/kitti_models/pv_rcnn.yaml \
--ckpt pv_rcnn_8369.pth \
--data_path ${POINT_CLOUD_DATA}
Here ${POINT_CLOUD_DATA}
could be in any of the following format:
- Your transformed custom data with a single numpy file like
my_data.npy
. - Your transformed custom data with a directory to test with multiple point cloud data.
- The original KITTI
.bin
data withindata/kitti
, likedata/kitti/training/velodyne/000008.bin
.
Then you could see the predicted results with visualized point cloud as follows: