Skip to content

Utilities to convert DeepLabCut (DLC), output to/from Neurodata Without Borders (NWB) format.

License

Notifications You must be signed in to change notification settings

DeepLabCut/DLC2NWB

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

41 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Welcome to the DeepLabCut 2 Neurodata Without Borders Repo

Here we provide utilities to convert DeepLabCut (DLC) output to/from Neurodata Without Borders (NWB) format. This repository also elaborates a way for how pose estimation data should be represented in NWB.

Specifically, this package allows you to convert DLC's predictions on videos (*.h5 files) into NWB format. This is best explained with an example (see below).

NWB pose ontology

The standard is presented here. Our code is based on this NWB extension (PoseEstimationSeries, PoseEstimation) that was developed with Ben Dichter, Ryan Ly and Oliver Ruebel.

Installation:

Simply do (it only depends on ndx-pose and deeplabcut):

pip install dlc2nwb

Example within DeepLabCut

DeepLabCut's h5 data files can be readily converted to NWB format either via the GUI from the Analyze Videos tab or programmatically, as follows:

import deeplabcut

deeplabcut.analyze_videos_converth5_to_nwb(config_path, video_folder)

Note that DLC does not strictly depend on dlc2nwb just yet; if attempting to convert to NWB, a user would be asked to run pip install dlc2nwb.

Example use case of this package (directly):

Here is an example for converting DLC data to NWB format (and back). Notice you can also export your data directly from DeepLabCut.

from dlc2nwb.utils import convert_h5_to_nwb, convert_nwb_to_h5

# Convert DLC -> NWB:
nwbfile = convert_h5_to_nwb(
    'examples/config.yaml',
    'examples/m3v1mp4DLC_resnet50_openfieldAug20shuffle1_30000.h5',
)

# Convert NWB -> DLC
df = convert_nwb_to_h5(nwbfile[0])

Example data to run the code is provided in the folder examples. The data is based on a DLC project you can find on Zenodo and that was originally presented in Mathis et al., Nat. Neuro as well as Mathis et al., Neuron. To limit space, the folder only contains the project file config.yaml and DLC predictions for an example video called m3v1mp4.mp4, which are stored in *.h5 format. The video is available, here.

Funding and contributions:

We gratefully acknowledge the generous support from the Kavli Foundation via a Kavli Neurodata Without Borders Seed Grants .

We also acknowledge feedback, and our collaboration with Ben Dichter, Ryan Ly and Oliver Ruebel.