This readme is to document how to create your own data with LabelFusion.
If you're looking to download the example LabelFusion dataset, go here: http://labelfusion.csail.mit.edu/#data
Recommended setup is through our Docker.
If instead you'd prefer a native install, go to: "Setup Instructions".
This is the quick version. If you'd prefer to go step-by-step manually, see Pipeline_Instructions.
For ElasticFusion calibration, create camera.cfg file into your lcm-log folder. camera.cfg is fx fy px py
in one line.
For render training image, edit LabelFusion/modules/labelfusion/rendertrainingimages.py
"setCameraInstrinsicsAsus" fuction.
def setCameraInstrinsicsAsus(view):
principalX = 320.0
principalY = 240.0
focalLength = 617.0 # fx = fy = focalLength
setCameraIntrinsics(view, principalX, principalY, focalLength)
First, cdlf && cd data/logs
, then make a new directory for your data. In one terminal, run:
openni2-camera-lcm
In another, run:
lcm-logger
Your data will be saved in current directory as lcmlog-*
.
First, install librealsense , intel_ros_relasense and rgbd_ros_to_lcm
Second, cdlf && cd data/logs
, then make a new directory for your data. In one terminal, run:
roscore
In one, run:
roslaunch realsense2_camera rs_rgbd.launch
modify rgbd_ros_to_lcm topic: modify this file ~/catkin_ws/src/rgbd_ros_to_lcm/launch/lcm_republisher.launch to
<?xml version="1.0"?> <launch> <node name="lcm_republisher" pkg="rgbd_ros_to_lcm" type="lcm_republisher" output="screen" respawn="false" > <rosparam subst_value="true"> # input parameters subscribe_point_cloud: false rgb_topic: /camera/color/image_raw depth_topic: /camera/aligned_depth_to_color/image_raw cloud_topic: /camera/depth_registered/points # output parameters output_lcm_channel: "OPENNI_FRAME" compress_rgb: true compress_depth: true debug_print_statements: true </rosparam> </node> </launch>
and run
roslaunch rgbd_ros_to_lcm lcm_republisher.launch
In another, run:
lcm-logger
Your data will be saved in current directory as lcmlog-*
.
First we will launch a log player with a slider, and a viewer. The terminal will prompt for a start and end time to trim the log, then save the outputs:
run_trim
Next, we prepare for object pose fitting, by running ElasticFusion and formatting the output:
run_prep
Next, launch the object alignment tool and follow the three steps:
run_alignment_tool
- Check available object types:
- In your data directory, open
object_data.yaml
and review the available objects, and add the objects / meshes that you need.
- If you need multiple instances of the same object, you will need to create separate copies of the object with unique names (e.g.
drill-1
,drill-2
, ...). For networks that do object detection, ensure that you remove this distinction from your labels / classes.
Align the reconstructed point cloud:
Open measurement panel (View -> Measurement Panel), then check Enabled in measurement panel
Use
shift + click
and click two points: first on the surface of the table, then on a point above the tableOpen Director terminal with F8 and run:
gr.rotateReconstructionToStandardOrientation()
Close the
run_alignment_tool
application (ctrl + c) and rerun.
Segment the pointcloud above the table
- Same as above, use
shift + click
and click two points: first on the
surface of the table, then on a point above the table - Open Director terminal with F8 and run:
gr.segmentTable() gr.saveAboveTablePolyData()
- Close the
run_alignment_tool
application (ctrl + c) and rerun.
- Same as above, use
Align each object and crop point clouds.
Assign the current object you're aligning, e.g.:
objectName = "drill"
Launch point cloud alignment:
gr.launchObjectAlignment(objectName)
This launches a new window. Click the same three points in model and on pointcloud. Using
shift + click
to do this. After you do this the affordance should appear in main window using the transform that was just computed.- If the results are inaccurate, you can rerun the above command, or you can double-click on each affordance and move it with an interactive marker:
left-click
to translate along an axis,right-click
to rotate along an axis.
- If the results are inaccurate, you can rerun the above command, or you can double-click on each affordance and move it with an interactive marker:
When you are done with an object's registration (or just wish to save intermediate poses), run:
gr.saveRegistrationResults()
After the alignment outputs have been saved, we can create the labeled data:
run_create_data
By default, only RGB images and labels will be saved. If you'd also like to save depth images, use the -d
flag:
run_create_data -d
Navigate to /SegNet/MovingCamera/
Copy all the data you want to use (created by run_create_data
from different datasets) into ./train
Use a different subdirectory inside /train/
for each log, i.e.:
/train/log-1 /train/log-2
Then resize all of the training images to a better size for training:
python resize_all_images.py
Finally, create the description of image-label pairs needed as SegNet input:
python create_traiing_set_list.py
To train SegNet:
cd / ./SegNet/caffe-segnet/build/tools/caffe train -gpu 0 -solver /SegNet/Models/moving_camera_solver.prototxt